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Table of contents :
Cover
Half Title
Title Page
Copyright Page
About the Editors
Table of Contents
Contributors
Abbreviations
Preface
1. High-Resolution Mass Spectrometry: Instrumentation in General
2. Data Processing and Computational Techniques
3. Dereplication: HRMS in Phytochemical Analysis
4. Hyphenation of HRMS with Instruments for Phytochemical Characterization
5. High-Resolution Bioassays as Preparation Screening Techniques
6. Bioanalytical Screening/Purification Techniques
7. Plant Metabolites, While Looking Through HRMS: Characterization of the Phenolic Profile of Lactuca sativa as a Case Study
8. Applications of Gas Chromatography-High-Resolution Mass Spectrometry (GC-HRMS) for Food Analysis.
Index
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HIGH-RESOLUTION MASS

SPECTROSCOPY FOR

PHYTOCHEMICAL ANALYSIS State-of-the-Art Applications and Techniques

HIGH-RESOLUTION MASS

SPECTROSCOPY FOR

PHYTOCHEMICAL ANALYSIS State-of-the-Art Applications and Techniques

Edited by:

Sreeraj Gopi, PhD Augustine Amalraj, PhD Shintu Jude, MSc

First edition published 2022 Apple Academic Press Inc. 1265 Goldenrod Circle, NE, Palm Bay, FL 32905 USA 4164 Lakeshore Road, Burlington, ON, L7L 1A4 Canada

CRC Press 6000 Broken Sound Parkway NW, Suite 300, Boca Raton, FL 33487-2742 USA 2 Park Square, Milton Park, Abingdon, Oxon, OX14 4RN UK

© 2022 Apple Academic Press, Inc. Apple Academic Press exclusively co-publishes with CRC Press, an imprint of Taylor & Francis Group, LLC Reasonable efforts have been made to publish reliable data and information, but the authors, editors, and publisher cannot assume responsibility for the validity of all materials or the consequences of their use. The authors, editors, and publishers have attempted to trace the copyright holders of all material reproduced in this publication and apologize to copyright holders if permission to publish in this form has not been obtained. If any copyright material has not been acknowledged, please write and let us know so we may rectify in any future reprint. Except as permitted under U.S. Copyright Law, no part of this book may be reprinted, reproduced, transmitted, or utilized in any form by any electronic, mechanical, or other means, now known or hereafter invented, including photocopying, microfilming, and recording, or in any information storage or retrieval system, without written permission from the publishers. For permission to photocopy or use material electronically from this work, access www.copyright.com or contact the Copyright Clearance Center, Inc. (CCC), 222 Rosewood Drive, Danvers, MA 01923, 978-750-8400. For works that are not available on CCC please contact [email protected] Trademark notice: Product or corporate names may be trademarks or registered trademarks and are used only for identification and explanation without intent to infringe. Library and Archives Canada Cataloguing in Publication Title: High-resolution mass spectroscopy for phytochemical analysis : state-of-the-art applications and techniques / edited by: Sreeraj Gopi, PhD, Augustine Amalraj, PhD, Shintu Jude, MSc. Names: Gopi, Sreeraj, editor. | Amalraj, Augustine, editor. | Jude, Shintu, editor. Description: First edition. | Includes bibliographical references and index. Identifiers: Canadiana (print) 2021016316X | Canadiana (ebook) 20210163283 | ISBN 9781771889964 (hardcover) | ISBN 9781774638187 (softcover) | ISBN 9781003153146 (ebook) Subjects: LCSH: Phytochemicals—Analysis. | LCSH: High resolution spectroscopy. Classification: LCC QK865 .H54 2022 | DDC 572/.2—dc23 Library of Congress Cataloging‑in‑Publication Data Names: Gopi, Sreeraj, editor. | Amalraj, Augustine, editor. | Jude, Shintu, editor. Title: High-resolution mass spectroscopy for phytochemical analysis : state-of-the-art applications and techniques / Sreeraj Gopi, Augustine Amalraj, Shintu Jude. Description: First edition. | Palm Bay, FL, USA : Apple Academic Press, 2022. | Includes bibliographical references and index. | Summary: “This new volume provides a bird’s-eye view of the properties, utilization, and importance of high resolution mass spectrometry (HRMS) for phytochemical analyses. The book discusses the new and state-of-the-art technologies related to HRMS in phytochemical analysis for the food industry in a comprehensive manner. Phytochemical characterization of plants is important in the food and nutraceutical industries and is also necessary in the procedures followed for drug development, toxicology determination, forensic studies, origin verification, quality assurance, etc. Easy determination of active compounds and isolation as well as purification of the same from natural matrices are required, and the possibilities and advantages of HRMS pave the way for improved analysis patterns in phytochemistry. This book is unique in that its sole consideration is on the importance of HRMS in the field of phytochemical analysis. Along with an overview of basic instrumental information, the volume provides a detailed account of data processing and dereplication strategies. Technologies such as bioanalytical techniques and bioassays are considered also to provide support for the functions of the instruments used. In addition, a case study is presented to depict the complete phytochemical characterization of a matrix by HRMS. The book covers processing and computational techniques, dereplication, hyphenation, high-resolution bioassays, bioanalytical screening/purification techniques, applications of gas chromatography-high-resolution mass spectrometry, and more. Key features: Covers the fundamental instrumentation and techniques Discusses HRMS-based phytochemical research details Focuses strictly on the phytochemical considerations High-Resolution Mass Spectroscopy for Phytochemical Analysis: State-of-the-Art Applications and Techniques will be a valuable reference guide and resource for researchers, faculty and students in related fields, as well as those in the phytochemical industries”-- Provided by publisher. Identifiers: LCCN 2021011439 (print) | LCCN 2021011440 (ebook) | ISBN 9781771889964 (hardback) | ISBN 9781774638187 (paperback) | ISBN 9781003153146 (ebook) Subjects: LCSH: Phytochemicals--Analysis. | High resolution spectroscopy. Classification: LCC QK865 .H585 2022 (print) | LCC QK865 (ebook) | DDC 572/.2--dc23 LC record available at https://lccn.loc.gov/2021011439 LC ebook record available at https://lccn.loc.gov/2021011440 ISBN: 978-1-77188-996-4 (hbk) ISBN: 978-1-77463-818-7 (pbk) ISBN: 978-1-00315-314-6 (ebk) DOI: 10.1201/9781003153146

About the Editors Sreeraj Gopi, PhD Plant Lipids Private Limited, Kerala, India Sreeraj Gopi, PhD, is an Industrial Scientist with a doctorate in organic chemistry, nanotechnology, and nanodrug delivery. He has been working in the area of natural products, isolation, and establishing biological activities. He has published more than 85 international articles and filed more than 75 international patents. Dr. Gopi is a fellow of the Royal Society of Chemistry.

Augustine Amalraj, PhD Deputy Manager, Department of Research and Development, Plant Lipids Private Limited, Cochin, India Augustine Amalraj, PhD, is currently working as a Deputy Manager in the Department of Research and Development in Plant Lipids Private Limited, Cochin, India. He obtained his doctoral degree in chemistry from Gandhigram Rural Institute-Deemed University, Gandhigram, Tamil Nadu, India. His research interest is in applied chemistry, food chemistry, natural product chemistry, environmental chemistry, chemosensors, and polymer and nanocomposite materials. He has published more than 50 research articles in international journals as well as 10 book chapters.

Shintu Jude, MSc Assistant Manager, Research and Development Department, Plant Lipids Private Limited, Cochin, India Shintu Jude is working as an Assistant Manager in the Research and Development Department at Plant Lipids Private Limited, Cochin, India. Mrs. Jude completed her postgraduation at Mahatma Gandhi University. She is working on mass spectroscopic instruments for natural products and metabolites. She has published more than 20 research articles and 10 book chapters.

Contents

Contributors................................................................................................. ix

Abbreviations ............................................................................................... xi

Preface ...................................................................................................... xvii

1. High‑Resolution Mass Spectrometry: Instrumentation in General ....... 1

Shintu Jude and Sreeraj Gopi

2.

Data Processing and Computational Techniques................................... 19

Joby Jacob, Anjana S. Nair, and Sreeraj Gopi

3.

Dereplication: HRMS in Phytochemical Analysis.................................. 45

Shintu Jude and Sreeraj Gopi

4. Hyphenation of HRMS with Instruments for

Phytochemical Characterization ............................................................. 67

Shintu Jude and Sreeraj Gopi

5.

High‑Resolution Bioassays as Preparation Screening Techniques ....... 97

Shintu Jude and Sreeraj Gopi

6.

Bioanalytical Screening/Purification Techniques................................. 121

Shintu Jude and Sreeraj Gopi

7.

Plant Metabolites, While Looking Through HRMS: Characterization of the Phenolic Profile of Lactuca sativa as a Case Study............................................................... 149

Gabriela E. Viacava, Luis A. Berrueta, Blanca Gallo, and Rosa M. Alonso-Salces

8.

Applications of Gas Chromatography‑High‑Resolution

Mass Spectrometry (GC‑HRMS) for Food Analysis ........................... 213

Janet Adeyinka Adebiyi, Patrick Berka Njobeh, Nomali Ngobese,

Gbenga Adedeji Adewumi, and Oluwafemi Ayodeji Adebo

Index ................................................................................................................. 239

Contributors

Janet Adeyinka Adebiyi

Department of Biotechnology and Food Technology, Faculty of Science, University of Johannesburg, P.O. Box – 17011, Doornfontein, Johannesburg, South Africa, E-mail: [email protected]

Oluwafemi Ayodeji Adebo

Department of Biotechnology and Food Technology, Faculty of Science,

University of Johannesburg, P.O. Box – 17011, Doornfontein, Johannesburg, South Africa,

E-mail: [email protected]

Gbenga Adedeji Adewumi

Department of Microbiology, Faculty of Science, University of Lagos, Akoka, Lagos, Nigeria

Rosa M. Alonso‑Salces

Research Group of Applied Microbiology, Social Bee Research Center, Institute for Research in

Production, Health and Environment, CONICET, Department of Biology,

Faculty of Exact and Natural Sciences, National University of Mar del Plata, Funes – 3350,

Mar del Plata – 7600, Argentina

Luis A. Berrueta

Department of Analytical Chemistry, Faculty of Science and Technology, University of the Basque Country/Euskal HerrikoUnibertsitatea (UPV/EHU), PO Box – 644, 48080, Bilbao, Spain

Blanca Gallo

Department of Analytical Chemistry, Faculty of Science and Technology, University of the Basque Country/Euskal HerrikoUnibertsitatea (UPV/EHU), PO Box – 644, 48080, Bilbao, Spain

Sreeraj Gopi

Research and Development (R&D) Center, Plant Lipids (P) Ltd., Kadayiruppu, Kolenchery, Cochin, Ernakulam, Kerala – 682311, India

Joby Jacob

Research and Development (R&D) Center, Plant Lipids (P) Ltd., Kadayiruppu, Kolenchery, Cochin, Ernakulam, Kerala – 682311, India

Shintu Jude

Research and Development (R&D) Center, Plant Lipids (P) Ltd., Kadayiruppu, Kolenchery, Cochin, Ernakulam, Kerala – 682311, India

Anjana S. Nair

Research and Development (R&D) Center, Plant Lipids (P) Ltd., Kadayiruppu, Kolenchery, Cochin, Ernakulam, Kerala – 682311, India

Nomali Ngobese

Department of Botany and Plant Biotechnology, Faculty of Science, University of Johannesburg, P.O. Box – 524, Auckland Park, Johannesburg, South Africa

x

Contributors

Patrick Berka Njobeh

Department of Biotechnology and Food Technology, Faculty of Science,

University of Johannesburg, P.O. Box – 17011, Doornfontein, Johannesburg, South Africa

Gabriela E. Viacava

Research Group of Food Engineering, National Council of Scientific and Technological Research (CONICET), Department of Chemistry and Food Engineering, Faculty of Engineering, National University of Mar del Plata, 4302 Juan B. Justo Street, Mar del Plata – 7600, Argentina

Abbreviations

2D ACE AChE AD AGH AGN-TCMB AIF AMDIS AMPK AMT ANOVA APCI APGC-MS APPI ARE ASAP CAD CAP-e CAS CCIC CE CEM CF CGAs CGE CI CID CIEF CMA

two-dimensional angiotensin-converting enzyme acetylcholinesterase Alzheimer’s disease alpha-glucosidase AGH magnetic nanoparticle beads all ion fragmentation automated mass spectral deconvolution and identification system adenosine monophosphate-activated protein kinase accurate mass and time analysis of variance atmospheric pressure chemical ionization atmospheric pressure gas chromatography equipped with tandem mass spectrometry atmospheric pressure photoionization antioxidant response element atmospheric pressure solids analysis probe collisionally activated dissociation cell-based antioxidant protection in erythrocytes chemical abstracts service Campus Chemical Instrument Center capillary electrophoresis channel electron multiplier chemical fingerprinting chlorogenic acids capillary gel electrophoresis chemical ionization collision-induced dissociation capillary isoelectric focusing caffeoylmalic acid

xii

CMC COX CPs CQA CVDHD CysLTs CZE Da DAD DAPCI DAPPI DART DCBI DESI DIA DL-PCBs DOX DP DP ECD ECG ECNI EESI EGCG EGFR EI EIC ELDI ESI FAAH FAB FAC FBF FD FI FIA

Abbreviations

cell membrane chromatography cyclooxygenase chlorinated paraffin caffeoylquinic acid cardiovascular disease herbal database cysteinyl leukotrienes capillary zone electrophoresis Daltons diode array detector desorption atmospheric pressure chemical ionization desorption atmospheric pressure photoionization direct analysis in real time desorption corona beam ionization desorption electrospray ionization data-independent acquisition dioxin-like polychlorinated biphenyls doxorubicin degrees of polymerization dynamic programming electronic circular dichroism epicatechin gallate electron capture negative ionization extractive electrospray ionization epigallocatechin gallate epithelial cell growth factor receptor electron ionization extracted ion chromatogram electrospray-assisted desorption/ionization electrospray ionization fatty acid amide hydrolase fast-atom bombardment frontal affinity chromatography find by formula field desorption field ionization flow injection analysis

Abbreviations

FPD FT FT-ICR FWHM GC-EI-Orbitrap-HRAMS GCG GC-HRAMS GC-HR-MS GC-HRToF-MS GC-MS G-LC G-SC GSL HCA HRFSMS HRMS HSCCC HSM IC/PAD ICPs ICR ID-GC-HRMS IMERs IT JCMPIH LAB LADESI LAESI LC-MS

xiii

focal plane detectors Fourier transform Fourier transform ion cyclotron resonance full width at half maximum gas chromatography-electron ionizationOrbitrap-high resolution accurate mass spectrometry gallocatechin gallate gas chromatography-high resolution accu­ rate mass spectrometry gas chromatography-high-resolution mass spectrometry gas chromatography-high resolution time of flight mass spectrometry gas chromatography-mass spectrometry gas-liquid chromatography gas-solid chromatography glucosinolates hierarchical clustering analysis high-resolution full scan mass spectrometric high-resolution mass spectrometers high-speed counter-current chromatography hydrophobic subtraction model ion chromatography coupled with pulsed amperometric detection instant coffee premixes ion cyclotron resonance isotope dilution high-resolution gas chromatography/high-resolution mass spectrometry immobilized enzyme reactors ion trap Jatropha curcas meal protein isolate hydrolysates lactic acid bacteria laser-assisted desorption electrospray ionization laser ablation electrospray ionization liquid chromatography-mass spectrometry

xiv

LDI LOX LRMS LSS LT LTQ MAF MALDESI MALDI MCCP MCP MDS MEF MRM MS MW NACE NIMS NINA NMF NMR NNC NO NPACT NPASS NPS NSDESI OPLC OPLS-DA ORAC PA PAHs PAINS PAs

Abbreviations

laser desorption ionization lipoxygenase low-resolution mass spectrometry linear solvent strength leukotriene linear trap quadrupole maximum autocorrelation factor matrix-assisted laser desorption electrospray ionization matrix-assisted laser desorption ionization medium carbon chain CP microchannel plates multidimensional scaling multistage elemental formula multiple reactions monitoring mass spectrometer molecular weights non-aqueous capillary electrophoresis nanoelectrospray ionization, nanostructure­ initiator mass spectrometry nontargeted diagnostic ion network analysis non-negative matrix factorization nuclear magnetic resonance nearest neighboring connecting nitric oxide naturally occurring plant-based antican­ cerous compound-activity-target database natural product activity and species source new psychoactive substances nanospray desorption electrospray ionization overpressured layer chromatography orthogonal projection to latent structures discriminate analysis oxygen radical absorbance capacity phenolic acids polyaromatic hydrocarbons pan-assay interference compounds proanthocyanidins

Abbreviations

PBDEs PCA PCBs PCO PDE5 PFE PhGs PIF PlantMAT PLE PLSA PLS-DA PM POPs PPARγ PTP1B pYES QC Q-Orbitrap QqQ QSRR QToF QToF/MS RA RF RHS RIPs RP RP-HPLC RPLC RT SA SAR SCCP SEC SEM SFC

xv

polybrominated diphenyl ethers principal component analysis polychlorinated biphenyls Polygonum Cillinerve Ohwi phosphodiesterase 5 pressurized fluid extraction phenylethanoid glycosides precursor ion fingerprinting plant metabolite annotation toolbox pressurized liquid extraction probabilistic latent semantic analysis partial least squares discriminant analysis plasma membrane persistent organic pollutants peroxisome proliferator-activated receptor-γ protein-tyrosine phosphatase 1B planar yeast estrogen screen quality control quadrupole Orbitrap triple quadrupole quantitative structure- retention relationship quadrupole time-of-flight quadrupole-time-of-flightmass analyzer relative abundance radio frequency roasted hazelnut skin reverse inhibitors of peroxidase reversed-phase reverse-phase high-performance liquid chromatography reverse-phase liquid chromatography retention time similarity analysis structure-activity relationship short carbon chain CP size exclusion chromatography secondary electron multipliers supercritical fluid chromatography

xvi

SGA SIM SIMS SORI-CID

Abbreviations

steroidal glycoalkaloids selected ion monitoring secondary ion mass spectroscopy sustained off-resonance irradiation collisioninduced dissociation SPE solid-phase extraction SZRD Suanzaoren decoction TCM traditional Chinese medicine TFC total flavonoid content TICs total ion chromatograms TLC thin layer chromatography ToF time-of-flight TPC total phenolic content TQ triple quadrupole UHPLC ultrahigh performance liquid chromatography UHPLC-DAD-HRAM-MS ultra-high-performance liquid chromatography-diode array detection-high resolution accurate mass-mass spectrometry XEQJ Xiao-Er-Qing-Jie XOD xanthine oxidase YCHD Yinchenhao decoction YXST Yangxinshi tablet

Preface

The exact determination of molecular mass provides a strong path towards compound characterization. High-resolution mass spectrometry (HRMS) relies on the fact that an individual atom’s mass is not just a factor of atomic mass units. In the case of molecules, the mere addition of atomic mass units of atoms doesn’t deliver any meaningful idea. In addition, the different molecules of the same compound can be of different masses, as there is a possibility of occurrence of isotopes. Therefore, it is possible to confidently assume the exact molecular mass’s elemental composi­ tion, thereby laying a foundation for many analytical procedures. Also, HRMS’s better features in terms of sensitivity, selectivity, resolution, repeatability, etc., improve the quality of analysis and allow the distinction of compounds from even complex matrices like herbal products. Plant-derived products are important in the industries for their application as food, drug, nutraceutical, color, flavor properties, and many more. Hence, phytochemical characterization is an inevitable term in many aspects. Phytochemical characterization and related techniques are included in the procedures followed for drug development, toxicology determination, forensic studies, origin verification, quality assurance, etc. Plants serve as the precursors for many drugs in traditional as well as modern medicinal systems. Even synthetic drugs take a model from the herbal moieties. Even so, the chaos related to synthetic products always brightens the path of natural products. Easy determination of active compounds and isolation, as well as purification of the same from natural matrices, raise the bigger question here; and the answer comes from many technologies and techniques, with HRMS being the base of them. The book discusses the newer technologies related to HRMS in the phytochemical analysis. Along with basic instrumental information, a detailed account is given on the data processing and dereplication strategies. The technologies such as bioanalytical techniques and bioassays are considered in a way such that they provide support for the functions of the instrument. A case study is presented to depict the complete phytochemical characterization of a matrix by HRMS. In addition, the relevance of HRMS in the field of the

xviii

Preface

food industry is discussed in a comprehensive manner. Altogether, the book provides a bird’s-eye view of the properties and utilization of HRMS for phytochemical analyzes.

CHAPTER 1

High-Resolution Mass Spectrometry: Instrumentation in General SHINTU JUDE and SREERAJ GOPI

Research and Development (R&D) Center, Plant Lipids (P) Ltd., Kadayiruppu, Kolenchery, Cochin, Ernakulam, Kerala – 682311, India ABSTRACT Mass spectrometry is becoming the nucleus of many analytical instru­ ments and study protocols nowadays and has been revolutionized by technologies with more and more mass-resolving potential. Today’s high-resolution mass spectrometry uses a variety of mass spectrometry designs. However, they are all still based on the simple, yet most impor­ tant resolving power. This chapter introduces the fundamentals of highresolution mass spectrometry-including detectors, ionization techniques, and data acquisition—in an approachable and comprehensive way. It goes beyond the basics of the instrumentation and provides a detailed look at the techniques and plays behind the instrumentation. 1.1 INTRODUCTION Mass spectrometry holds a prime chair in the venue of analysis. Mass spectrometry deals with the measurement of mass to charge ratio (m/z) of the analytes of interest. Therefore, the procedure starts from sample introduction, proceeds with ionization into charged particles, and finally, detection of the same as depicted in Figure 1.1. There are many custom­ ized/ improved versions of these mentioned steps that are developed to improve the efficiency, sensitivity, simplicity, etc., of mass spectrometers (MSs). There is a huge number of studies presented on the potential of MSs.

High-Resolution Mass Spectroscopy for Phytochemical Analysis

2

Sample insertion FIGURE 1.1

Ionization

Mass analyzer

Characterization

Schematic diagram representing the basic HRMS analysis.

The invention of MS was a milestone in the field of analysis. It made both the qualitative and quantitative analyzes more rapid, robust, and accurate by their immanent sensitivity and selectivity. As technology gets advanced, the drawbacks also find their new face to show off. Of course, mass analyzers are the unsung heroes in targeted quantitation. At the same time, due to their targeted nature, they may not identify the new/reformed compounds in the samples, though they are present in considerable amounts. Normally these quantitative analyzes are done in unit resolution, which can cause interference from compounds of similar mass and can lead to an alteration in the observed results. In addition, for the complex samples containing many analytes in it, method development takes much time, as the transitions should be optimized for each and every analyte separately. This scenario was altered by the evolution of high-resolution mass spectrometers (HRMS) in the 1960s with the launch of doublefocusing magnetic-sector mass instruments [1]. 1.2 HIGH-RESOLUTION MASS SPECTROMETERS (HRMS) The resolving power of an instrument can be defined as the ability of the instrument to provide well separation between neighboring peaks. The term resolution bears a little different meaning. It is defined and expressed as the ratio of the mass of interest to the difference in mass, which is the width of a peak at a particular peak height. High resolution or the sufficiently resolved peaks allows accurate mass determination by the instrumentation, which is proved to be applicable for the qualitative analysis, including elemental composition [2]. The improvements in terms of resolution, sensitivity, and speed enable it for the quantitative analysis also.

High-Resolution Mass Spectrometry

3

In Figure 1.2, the dotted lines represent the highly resolved peaks. The resolution of a mass peak can be indicated as Eqn. (1): R = M/ΔM

(1)

where, M is the mass of the analyte and ΔM is peak width/ peak separa­ tion. If the point of consideration is the peak width, then it can be better mentioned by the term ‘full width at half maximum (FWHM),’ which denotes the width of a spectrum curve at half of its maximum amplitude (Figure 1.2(B)). As can be seen in the figure and equation, the lower the FWHM better will be the resolution.

B

A

Low resolved peak;

FWHM

High resolved peak

FIGURE 1.2 (A) Difference between highly resolved peak and low resolved one; (B) representation of FWHM.

1.3 INSTRUMENTATION The HRMS family includes Fourier transform ion cyclotron resonance (FT-ICR), time-of-flight (ToF), and Orbitrap mass analyzers. This genera­ tion of high-resolution techniques could directly identify the molecular formula of the compound of interest by a single injection. Thus HRMS detectors are “mass” detectives in the field of chemical investigation since they help to find out the answers to the questions-what, why, how, when, and where. Advance in science found that hybrid HRMS instruments those constructed by combining different MSs in a single instrument such as quadrupole ToF (Q-ToF), ion trap (IT)-ToF, linear trap quadrupole (LTQ)Orbitrap, or Qe-Orbitrap, can act more intelligently. However, the basic instrumentation setup remains the same and can be represented as in Figure 1.1 irrespective of its resolution, and the basics of major high-resolution techniques are discussed in detail in this chapter.

4

High-Resolution Mass Spectroscopy for Phytochemical Analysis

1.3.1 TIME OF FLIGHT (TOF) Chromatography, equipped with the time of flight analyzers, was the first endeavor of commercial high-resolution MS, and it was indicated as a mature technology [3]. As mentioned by the developers of ToF instrumentation, it is a “velocitron,” which separates the ions with respect to velocity [4]. After the sample introduction, the analyte moieties are subjected to ionization, in order to produce charged ion packets, which are then directed by using an ion pulser to move along a defined path inside the flight tube (ToF tube). In the defined conditions of voltage and acceleration, the ions tend to move depending on their mass, and the ions with lighter mass to charge ratio (m/z) value will move faster and reach the detector first. The detector measures both the flight time and number of arriving ions simultaneously. Thus it enables the measurement of both the m/z value and its abundance at the same time. The working of ToF is governed by the ToF relationship, which can be expressed as in Eqn. (2): m = (2E/d2) × t2

(2)

where; m is the detected mass (m/z ratio), E is the energy to which an ion is accelerated, d is the flight path distance, and t is the flight time. Two variations of ToF systems are introduced to the scene, according to the direction of the acceleration of ions: linear and orthogonal. As the latter allows efficient coupling of continuous ion sources and provides better resolving power, it is used commonly for various applications. Figure 1.3 represents the working of orthogonal acceleration ToF-MS. Advanced ToF systems have many add-ons such as space focusing (to reduce the distance between produced ions in the ion source), reflectron (ion mirror-to compensate the initial energy difference between the produced ions, and to increase the flight path) [5], analog to digital conver­ sion detector (ADC-to record multiple ion events), ToF/ToF configura­ tions, etc. However, in ToF systems, the ion separation depends majorly on the effective flight tube length. In addition, they may be affected by saturation, which creates a negative impact on the mass detection, identification, and signal strength. In cases of extremely high masses, the resolution and related mass accuracy get deteriorated [6]. Moreover, in the case of ultra-small molecule mass ranges, they may provide false identification [7].

High-Resolution Mass Spectrometry

5

Detector

FIGURE 1.3

Schematic presentation of orthogonal TOF-MS.

1.3.2 FOURIER TRANSFORM ION CYCLOTRON RESONANCE (FT-ICR) FT-ICR was developed to determine the m/z value of ions accurately by an entirely different technology, devoid of the drawbacks of ToF [8]. Here, the produced ions are collected in a system of a strong magnetic field consisting of electric trapping plates, which is known as a penning trap. An oscillating electric field-commonly radio frequency (RF) pulses-is applied through the excitation plates for a while, orthogonal in direction to the magnetic field. As the cyclotron frequency appears as a function of mass, each ion possesses a distinct cyclotron frequency, and the ions which have cyclotron frequency equal to the emitted frequency will be excited to produce rotating ion packets. The rotation speed and frequency are dependent on the mass of the ions. The excited ions continue to rotate in their resonant cyclotron frequencies, with an increasing orbit, even after removing the excitation field. These ions attain a maximum orbit radius so as to come closer to the electrodes pair in the detection plates and induce a charge on them. The ions will lose energy, reduces their radius, and regain their original orbit. The induced charges on the plates will be detected as an image current, and the resulting free induction decay signals are then submitted to discrete fast Fourier transformation (Figure 1.4). Different ions possess different ion cyclotron frequencies depending on their mass, and the Fourier transformation signals give a spectrum of cyclotron frequencies corresponding to the m/z values. During the analysis, these frequencies and respective image current resulting from the charged ions are plotted over a period of time, which contains both the ion frequencies and their intensities corresponding to the abundance. This time-domain

High-Resolution Mass Spectroscopy for Phytochemical Analysis

6

signal will be converted into a mass spectrum. FT-ICR is a technology duo, in which Fourier transform (FT) denotes the representation of masses as frequencies, and ICR mentions it’s mode of working. The excitation of ions to larger trajectories to provide sufficient angular frequency is called ICR. Frequencies can be measured with high accuracy, and so, FT-MS can provide highly accurate mass measurements and high-resolution mass spectra. The angular frequency of a moving ion of mass m and charge q, in uniform magnetic field B, can be calculated as in Eqn. (3): ω = qB/m

(3)

In addition, FT-ICR makes use of this basic cyclotron equation. A sche­ matic diagram of the FT-ICR is given in Figure 1.4. Transmitter plate Receiver plate

Detector

Time‑domain signal

FIGURE 1.4

Representation of FTICRMS.

1.3.3 ORBITRAP Orbitrap mass analyzers are the new faces in the field, and as the name mentions, they work by orbital trapping of ions. The instrumentation is an advanced form of Kingdon ion trap, which traps the charged ions in an electrostatic field and separates the ions by applying a voltage between the two coaxial electrodes and thereby making the ions cycle around the inner electrode [9]. Orbitrap modified its predecessor by taking the advanced ideologies of FT mass analyzers. It consists of two electrodes arranged coaxially—the spindle-shaped central electrode and the outer barrier electrode, which actually consists of two parts arranged face to face and

High-Resolution Mass Spectrometry

7

separated by a narrow dielectric gap. One part of the outer electrode func­ tions as an ion exciter, and the other part as a detector. The void between the coaxial electrodes is the measurement chamber. A voltage is applied between the coaxial electrodes to create an electrostatic field in the direc­ tion of the axis. The ions are collected in a cooled curved trap (known as C-trap), injected at once through the ion entrance in the outer electrode, and are attracted towards the inner electrode due to the electric field. However, the tangential velocity of ions compensates for this attraction force. These two different forces make the ions circulate in the inner electrode forming a “rotating ion ring” and oscillate along the axis at the same time. Ions with different m/z value form different rotating rings which oscillate with different frequencies. The frequency of the axial oscillations is free from the initial properties of the ion, except the m/z ratio, and can be used for the mass measurement. The axial oscillation frequency is detected by the outer detector electrode and produces a corresponding image current, which is then converted to a chromatogram corresponding to the mass to charge spectrum as in the case of FTICR. The axial frequency of the ions can be expressed by Eqn. (4): ω = √[k/(m/z)]

(4)

where; ω is the oscillation frequency, and k is the instrument constant [10]. The working of orbitrap is depicted in Figure 1.5. Ion trajectory Dielectric gap Excited ion Outer electrode Inner electrode

Time‑domain signal FIGURE 1.5

Orbitrap.

In many cases, orbitrap exhibits more sensitivity and mass resolving capacity than the other two aforementioned techniques. However, this excellence loses gradually with the increase in m/z value, the number of ions, and the spectral acquisition rate. This drawback affects more while

8

High-Resolution Mass Spectroscopy for Phytochemical Analysis

hyphenating the technique with faster separation methods. In such cases, the performance of orbitrap drops, especially for chemical species with higher m/z values. Moreover, poor fidelity of isotope pattern, narrow dynamic range, etc., are also reported for orbitrap [11]. 1.4 SAMPLE INTRODUCTION The introduction of the sample in a proper manner is the first consideration in almost all analytical techniques. The mode of sample introduction/ inlet depends on the nature of the analyte and the sample matrix. Mass spectrometry basically relies on the generation of ions and hence on the ionizability of molecules. Thermally stable volatile compounds, which can exert a high vapor pressure at least by heating, are able to introduce into the system directly as a gas phase through a direct vapor inlet, which is renowned as the simplest sample introduction method. While coupled with separation techniques, the differentiated compounds are entered into the mass instrument through an interface. TLC separated samples can be evaluated in mass instruments either by direct introduction or by further preparation, depending on the mode of ionization applied and the instruments in the hyphenation series. In the case of GC, the interface is designed such that not any carrier gas, but all the analytes enter into the source region. Liquid chromatography allows a number of interfaces with a potential for ionization from the condensed phase, which enables the analyzes of thermally labile compounds also. Ionization probe is another major technique for the introduction of samples. Here, the low vapor pres­ sure samples can be placed directly in the source region by means of a probe. Frontal elution paper chromatography utilizes paper for mounting the samples. ESI techniques can be supported by the usage of the needle, wooden tip, Al foil, etc., as the sample introduction media. In ambient ionization techniques like DESI, DART, etc., the sample itself can be produced for ionization without any preparation, irrespective of its nature. 1.5

IONIZATION TECHNIQUES

During HRMS analyzes, the detectability and sensitivity are influenced by the employed mode and extend of ionization. So, maximizing ion genera­ tion is the first major hurdle to be jumped over to achieve high resolution

High-Resolution Mass Spectrometry

9

and sensitivity. This has led to more profound research in the area, resulted in the proliferation of many more modern techniques. It may take another complete book to discuss all of them in detail. Therefore, consideration is given to the significant technologies, which allow HRMS to be a strong tool across the area of phytochemical analysis. According to the mode and extend of ionization, the techniques fall under different categories. Gas-phase ionization comprises electron ionization (EI), chemical ionization (CI), fast-atom bombardment (FAB), etc., in which the compounds with thermal stability have been volatilized, and the gas phase molecules are ionized. Fast atom bombardment (FAB) is a first-generation ionization method, which makes use of a fast atom beam for the ionization. However, most of these classic techniques are associated with high fragmentation and are not considered for HRMS, as the nature of information needed from the samples is different. The most frequently used HRMS ionization techniques are electrospray ionization (ESI), secondary ion mass spectroscopy (SIMS), atmospheric pressure chemical ionization (APCI), atmospheric pressure photoionization (APPI), desorption electrospray ionization (DESI), and matrix-assisted laser desorption ionization (MALDI). ESI is a widely used technology, which makes use of an electrospray, which is obtained by applying a definite voltage across the droplets from the capillary under atmospheric pressure. An inert de-solvating gas, together with high temperature, succeeds in the evaporation of the solvent, producing independent analyte ions. This technique is apt for highly polar, thermally labile, large molecules and can create multiply charged ions. Heated ESI is a little more advanced technology, where the heated nozzle improves electrostatic fields, thus enhances ionization, and increases the possibility to do the analyzes in positive or negative modes, depending on the nature and the pH of the target compound. Besides, it allows the provision of multiple ionization for a single molecule, which permits the analyzes of large molecules. However, apart from the possibilities, ESI constrains itself from using a range of solvents and thus closes the chances for many applications. The presence of a corona discharge in the ionization region differenti­ ates APCI from ESI. Corona discharge furnishes a high-density discharge current in the ionization area, which causes the excitation of nebulization gas, producing the molecular ions of the same. Besides, the high probe temperature and regulated nebulization gas flow together produce a gas

10

High-Resolution Mass Spectroscopy for Phytochemical Analysis

stream from the analyte solution. Here, an ion-molecule reaction takes place between the molecular ions of nebulization gas and the evaporated mobile phase, which in turn ionizes the analyte molecule in the gas stream. Like in APCI, APPI requires the analyte solution to get vaporized. It utilizes a UV light source for the primary ionization, and the analyte molecule absorbs a high-energy photon and subsequently ejects an elec­ tron to form a radical cation. Direct APPI produces ions directly from the analyte molecules, forming molecular radical cations. Dopant APPI employs photoionizable molecules (dopants) for creating charged species, and they undergo charge exchange reactions to produce analyte molecular ions. APPI can ionize less polar compounds, compared to APCI and ESI. SIMS is considered the most sensitive surface analysis technique used widely for solid samples. A primary ion beam is allowed to bombard with the sample surface, in order to generate secondary ions, which is analyzed by a MS. While carrying out SIMS, the sample surface gets sputtered. It is possible to obtain the ion fragmentation patterns from an atomic monolayer of the surface, with a controlled sputtering rate. This is useful for molecular species identification, and the process is named ‘static SIMS.’ In ‘dynamic SIMS,’ a high yield of secondary ions is produced by a high sputtering rate, which provides information for the depth profile and quan­ titative data. Matrix-assisted laser desorption/ionization (MALDI) is a potential device for soft ionization of large molecules like protein. Though the tool is using to a great degree, the mechanism behind MALDI is still under investigation. The sample to be ionized is mixed well with a matrix solution so that on drying, the analyte would be embedded within the recrystallized matrix. A beam of the laser is used to illuminate the sample, co-crystallized with the matrix, and placed in the vacuum. This illumina­ tion results in both desorption and ionization, producing molecular ions in the vapor phase. The invention of MALDI has increased the range of analyzable samples in terms of type, molecular mass, and functionalities, and in combining with mass instruments, it provides a strong platform for bioanalysis. Literally, the term field desorption (FD) denotes the desorption of a material into its gas phase ions under a strong potential field from a metal surface (known as an emitter) on which it was deposited. The ioniza­ tion can happen if the metal surface has an appropriate geometry under a high vacuum, and it can be thermal ionization or field ionization (FI).

High-Resolution Mass Spectrometry

11

Thermally labile compounds with high molecular mass are ionized well with FD. Ionization of the volatile/gaseous compounds by applying a high potential field is termed as FI. The mechanism provides molecular ions and is suitable for less polar and thermally stable compounds. 1.5.1 AMBIENT IONIZATION TECHNIQUES An important innovation in the domain of mass spectrometry ionization techniques is ambient ionization, which allows the ionization of samples in their ambient environment outside the MS, without any treatment or prior preparation and within a little time. It utilizes the scope of selective desorption and ionization of compounds, which occurs at the surface. By employing direct ionization, the possibilities of complications associ­ ated with sample preparation and matrix effects are avoided. It is really interesting to know that more than thirty ambient ionization techniques were developed within the last two decades. These techniques, while hyphenated with MS, find applications in a number of fields. Among the ambient ionization techniques, DESI, direct analysis in real time (DART), desorption atmospheric pressure photoionization (DAPPI) are the most accepted and widely used. DESI is a combo of desorption and ESI. Here, by using the electrospray, a fast-moving, electrically charged mist of ions and charged droplets were produced, and the same was directed towards the sample surface to carry out the ionization. Ionization occurs by charge transfer, and the secondary ions emitted from the sample surface are mass analyzed. DESI provides ionization for a huge range of masses and materials [12]. In DART, a heated stream of inert gas is excited by using glow discharge plasma and is directed to the sample surface to be analyzed. Ion-molecule reactions take place, and as a result, analyte ions are produced. As exhibited by DESI, DART also characterized by low energy ionization, a large range of sample surfaces, good sensitivities, and can be operated in open environ­ ments without sample preparation. These special natures of DART enable it to do wonders; even living organisms can be subjected to DART-MS [13]. DAPPI enables desorption of the analyte from the sample surface by employing a heated jet of vaporized solvent. The desorbed analyte molecules from the surface are then subjected to ionization induced by the photons emitted from the lamp. Comparing with other ambient ionization

12

High-Resolution Mass Spectroscopy for Phytochemical Analysis

techniques, DAPPI is more sensitive towards less polar analytes. Highly conjugated compounds can be ionized selectively with less matrix contami­ nations. DAPCI resembles APCI, having corona discharge for generating species from chemicals, but proceeds with desorption or ionization of surface molecules. In most of the cases, ambient air or solvents serve as chemical reagents, and proceeds for small molecules with volatile nature [14]. The second generation of ionization techniques are introduced and utilized by combining more than one properties of them and was named accordingly, such as matrix-assisted laser desorption electrospray ioniza­ tion (MALDESI), extractive electrospray ionization (EESI), laser ablation electrospray ionization (LAESI), laser-assisted desorption electrospray ionization (LADESI), electrospray-assisted desorption/ionization (ELDI), nanospray desorption electrospray ionization (NSDESI), desorption atmospheric pressure chemical ionization (DAPCI), desorption atmo­ spheric pressure photoionization (DAPPI), chip-based nanoelectrospray ionization, nanostructure-initiator mass spectrometry (NIMS), and atmo­ spheric pressure solids analysis probe (ASAP). The increased number of techniques allows one to select any of them according to the sample and the conditions. The advanced benefits such as sustained minimal usage of solvents allowing long runs of samples, minimum sample consumption, and reduced cross contaminations make these 2G ionization techniques very special [15]. 1.6 DETECTORS All the processes starting from the sample introduction and propagated through suitable ionization come to a fruitful end, when the ions resolved by the analyzer are detected by proper detectors. Basically, the detector identifies and measures the charged particle and provides data on the pres­ ence and abundance of the particular charged species. There are many types of detectors invented by the time, some of which are discussed below. A metal cup, which is highly conductive and can catch the ions in a vacuum, can be employed as a basic mass detector, and this design is known as a Faraday cup. Here, the ions coming from the analyzer deposit their charge on the cup (electrode), which produces a corresponding elec­ tric current, flowing away from the electrode. It produces a voltage when passing through a resistor of high impedance.

High-Resolution Mass Spectrometry

13

As mass spectroscopy handles the small amount of samples, the number of particles passing through the detector will be quite small. Hence the detectors with amplification serve well. Secondary electron multipliers (SEM), discrete dynode electron multipliers, multiple plate detectors, etc., follows this consideration. Here, the ions with high velocity, coming from the analyzer, happen to hit on the surface of a metal/semiconductor, and a large number of secondary electrons are produced from the surface. An electrode, keeping a more positive potential and kept opposite to the emission location, could attract these secondary electrons and causes the emission of more electrons each. This generates an electric current to be detected by a preamplifier. In some cases, the secondary electron production made cascades inside a long tube in order to multiply the gain and is termed as a channel electron multiplier (CEM). The length and diameter of the tube determine the gain. Thus, the size of these CEM tubes is reduced up to micrometers and arranged into a bundle to form microchannel plates (MCP), which allows the detection of all the ions at a particular time interval (Figure 1.6). HV SEMICONDUCTING LAYER

PRIMARY RADIATION

CHEVRON

SECONDARY ELECTRONS

OUTPUT ELECTRONS

GLASS CHANNEL WALL PRIMARY RADIATION

CHANNELS

MCP 1

HV

MCP 2

HV

ELECTRONS OUTPUT

METAL ANODE

OUTPUT PULSE

FIGURE 1.6 Secondary electron multiplier (SEM) and channel electron multipliers (CEM).

14

High-Resolution Mass Spectroscopy for Phytochemical Analysis

MCPs are renowned for their speed and user-friendly manner. However, their basic detection parameters depend solely on the secondary electron emission, which shows discrimination for slower ions. In other words, a decrease in sensitivity is observed with the reduction in the acceleration voltage and an increase in the mass of ions. Irrespective of the technology, almost all the above-mentioned detectors drop sensitivity towards slower ions comparing with the faster ions and subsequently lose the intensity with an increase in mass. In most of cases, this can be identified as the less intense higher mass ions (slower). Post acceleration detectors are introduced against this scenario. Here the ions are accelerated just before the detectors and make sure that the ions hit the first dynode. A more enhanced way of this process is to use conversion dynodes, which are the electrodes kept under high potential to attract the ions from the analyzer, and allows the generation of the first set of secondary ions from their self. Detectors based on secondary ion emission, such as conversion dynodes, can be placed in front of SEM or CEM to obtain good sensitivity at higher molecule masses. They would attract the ions from the mass analyzer and act as an intermediate pusher for both positive and negative ions [16]. Cryogenic detectors came into the picture, giving special emphasis for very large-sized and slow-moving molecules. The mechanism behind cryogenic detectors relies on the phonons production in dielectric absorbers or the creation of quasi-particles in superconductors. Cryogenic detectors provide a wide range of accessible masses, while coupling with HRMS, especially with ToF-MS, and thereby improved the detection limits. They provide good energy resolution, which rather useful in identifying the different charge states and ion fragmentations [17]. Moreover, these special characteristics have been found useful in gathering information other than mass and contribute towards the studies on ion-detector interac­ tion formats, internal energy distribution, charge discrimination, etc., [18]. Focal plane detectors (FPD) find an advantage in simultaneously detecting a range of mass, than focusing a single m/z value. Another type of detector used in FTMS or in orbitrap is a pair of metal surfaces, placed inside the region of mass analyzers, and allows the ions to pass near them during oscillation. Here, not any direct current is produced, but a weak AC image current is generated between the electrodes. Different types of detectors allow suitable selection according to the purpose of analysis. In addition, for proper and meaningful results, the selec­ tion of proper ionization methods and detectors matters to a great extent.

High-Resolution Mass Spectrometry

15

1.7 VACUUM Mass is always defined separately from the weight, though they are related closely. Their differentiation is associated by the presence of the term ‘gravity’ in the definition of weight. So, without any doubt, mass can be identified accurately and easily in a system under vacuum, and vacuum furnishes an important part of the MSs. 1.8 DATA ACQUISITION Soft ionization techniques most probably result in the data of intact molec­ ular species (quasi-molecular ions). The quasi-molecular ions alone are not adequate for utilizing in structural characterization. Induced fragmentation by means of collision induced dissociation (CID) or collisionally activated dissociation (CAD) can be conducted to get two different types of spectral data-tandem mass spectrometry and sequential mass spectrometry. The tandem MS may be the most utilized mode of mass equipment, and its operating principle can be understood by outlining the well-known triple quadrupole (QQQ or TQ). Normally, three kinds of scanning data can be produced by TQ: (i) Product ion scanning, in which, the first quadrupole act as a specific scanner for the precursor ion, and they are transferred to the second quadrupole, which acts as a collision cell, where, the precursor ion is subjected to CID. The fragments produced as a result of CID is scanned by the third quadrupole, resulting in ‘product ion spec­ trum;’ (ii) Precursor ion scanning, where the scan is conducted by keeping the third quadrupole static (only one specific product ion is selected) and first quadrupole scanning in a given mass range, to result in a spectrum of precursor ions, which do fragment into same product ion, during CID. The common structural cores/common compound class can be identified by this experiment; (iii) Neutral loss scanning, where both the first and third quadrupoles are kept in scanning mode and the combination of scans provide the data of precursor ions which undergoes CID fragmentation by means of a specific neutral loss. This experiment helps to identify the functional groups. Mass spectrometry is enormously used for characterization studies, and multistage (sequential) mass spectrometry data furnish even more detailed information in this regard, especially useful for complex samples.

High-Resolution Mass Spectroscopy for Phytochemical Analysis

16

Instruments like IT, FTICR, etc., provides an opportunity for the isola­ tion and re-fragmentation of product ions produced by MS/MS, resulting in MS3 data. The process series of “isolation-re-fragmentation” can be continued in a controlled manner to produce MSn data where, ‘n’ repre­ sents the number of times, re-fragmentation has been carried out. Structure specific product ions are produced and their interpretation can lead to detailed characterization. 1.9 HRMS: SOME SMALL PITFALLS HRMS encourages ionizable compounds only. Neutral compounds or the poorly ionized ones act transparent and cannot be detected in the system. In the same manner, some of the compounds in the sample need different analyzing conditions than the others (such as ionization modes, pH, volt­ ages, etc.). Therefore, it is necessary to run the sample in the different possible conditions in order to obtain considerable information. 1.10 CONCLUSION Instruments play prime roles in many analytical purposes. While consid­ ering the phytochemical analyzes, different instruments are tooled from the very first step of raw material processing up to the final stages of compound identification and structure elucidation. In addition, the proper selection, use, and maintenance of instruments decide the quality of acquiring data. KEYWORDS • • • • • •

atmospheric pressure chemical ionization desorption atmospheric pressure photoionization fast-atom bombardment ionization orbitrap time-of-flight

High-Resolution Mass Spectrometry

17

REFERENCES 1. Beynon, J. H., (1960). Mass Spectrometry and its Application to Organic Chemistry, Elsevier: Amsterdam. 2. Marshall, A. G., & Hendrickson, C. L., (2008). High-resolution mass spectrometers. Annu. Rev. Anal. Chem., 1, 579–599. 3. Fjeldsted, J. C., (2016). Advances in time-of-flight mass spectrometry. In: Perez, S., Eichhorn, P., & Barcelo, D., (eds.), Comprehensive Analytical Chemistry Applications of Time-of-Flight and Orbitrap Mass Spectrometry in Environmental, Food, Doping, and Forensic Analysis (Vol. 71, p. 19). Elsevier: Amsterdam. 4. Cameron, A. E., & Eggers, D. F., (1948). An ion “velocitron.” Rev. Sci. Instrum., 19(9), 605–647. 5. Mamyrin, B. A., (2000). Time-of-flight mass spectrometry (concepts, achievements, and prospects). Int. J. Mass Spectrom., 206(3), 251–266. 6. Lee, J., & Reilly, P. T. A., (2011). Limitation of time-of-flight resolution in the ultra­ high mass range. Anal Chem., 83(15), 5831–5833. 7. Rajski, L., Gómez-Ramos, M. M., & Fernández-Alba, A. R., (2014). Large pesticide multi-residue screening method by liquid chromatography-orbitrap mass spectrometry in full scan mode applied to fruit and vegetables. J. Chromatog. A., 1360, 119–127. 8. Comisarow, M. B., & Marshall, A. G., (1974). Fourier transforms ion cyclotron resonance spectroscopy. Chem. Phys. Lett., 2(25), 282–283. 9. Kingdon, K. H., (1923). A method for the neutralization of electron space charge by positive ionization at very low gas pressures. Phys. Rev., 21(4), 408. 10. Zubarev, R. A., & Makarov, A., (2013). Orbitrap mass spectrometry. Anal. Chem., 85, 5288–5296. 11. Zhang, L. K., Rempel, D., Pramanik, B. N., & Gross, M. L., (2005). Accurate mass measurements by Fourier transform mass spectrometry. Mass Spectrom. Rev., 24(2), 286–309. 12. Takáts, Z., Wiseman, J. M., Gologan, B., & Cooks, R. G., (2004). Mass spectrometry sampling under ambient conditions with desorption electrospray ionization. Science, 306(5695), 471–473. 13. Gross, J. H., (2014). Direct analysis in real time: A critical review on DART-MS. Anal. Bioanal. Chem., 406(1), 63–80. 14. Haapala, M., Pól, J., Saarela, V., Arvola, V., Kotiaho, T., Ketola, R. A., Franssila, S., et al., (2007). Desorption atmospheric pressure photoionization. Anal. Chem., 79(20), 7867–7872. 15. Kind, T., & Fiehn, O., (2010). Advances in structure elucidation of small molecules using mass spectrometry. Bioanal. Rev., 2(1–4), 23–60. 16. Gross, J. H., (2004). Instrumentation. In: M ass Spectrometry: A Textbook (pp. 111–192). Springer International Publishing: Berlin. 17. Kraus, H., (2002). Cryogenic detectors and their application to mass spectrometry. Int. J. Mass Spectrom., 215(1–3), 45–58. 18. Frank, M., (2000). Mass spectrometry with cryogenic detectors. Nucl. Instrum. Meth. A., 444, 1(2), 375–384.

CHAPTER 2

Data Processing and Computational Techniques JOBY JACOB, ANJANA S. NAIR, and SREERAJ GOPI

Research and Development (R&D) Center, Plant Lipids (P) Ltd., Kadayiruppu, Kolenchery, Cochin, Ernakulam, Kerala – 682311, India ABSTRACT There are many processes and procedures are developed for data acquisi­ tion. Likewise, newer and newer technologies were developed for their processing also. The properties and methodologies of data processing depend on many factors such as the mode of information, analysis timelines, nature of handling analyte, etc., the chapter considers a discussion on these factors. In addition, different methodologies and processing methods are introduced and explained with relevant examples. 2.1 INTRODUCTION Over the last few decades, phytochemical researches are expanding due to the increase in the incorporation of computational techniques, math­ ematical modeling, and artificial intelligence. Computational phytochem­ istry (CP) is an emerging branch of phytochemistry, which efficiently uses computational techniques, mathematical and statistical models to deal with various aspects of phytochemical research. Computer-aided approaches are introduced to save time and money in phytochemical research, such as the identification of metabolomes by the bioactive compound discovery [1]. The impact on phytochemical research by computational methods is visible in recent publications, and will be facilitated in oncoming years since the way we perform phytochemical research today [2]. Since the introduction of combinatorial chemistry and compound libraries favors

20

High-Resolution Mass Spectroscopy for Phytochemical Analysis

phytochemical research, both in industry and in academia, it has been diverted to the production of dereplicated phytochemical libraries for HTS for new drug discovery [3]. For conducting dereplication and structural analysis, it is important to understand/process the data acquired by instrument, using an appropriate tool. For hard ionization techniques dealing with high-energy ionization sources, universally accepted databases and libraries are produced, which produce a highly uniform fragmentation pattern of molecules, between instruments. Quasi-molecular ions and their intended fragments are produced from soft ionization techniques; thus, it is not possible to repro­ duce the fragmentation pattern or mass signals, between instruments or laboratories. Researches for the reproducible MS spectral data from MS2/ MSninformation have ended up in spectral repositories, by making use of recent technologies such as tuning protocols [4], fragmentation energy index [5], etc. Many attempts have been made to create and validate a standard format for the MS data, so that it could be shared among science communities and be used for data processing. GPMDB [6], PRIDE [7], Peptide Atlas [8], Tranche [9], mzML [10], were some important, successful attempts among them. In spite the success of their accessibility and openness, they were having some drawbacks in terms of feasibility and multiplicity. A Forensic toxicology library was created for LC-QToF containing 56 natural toxic compounds, giving special emphasis on toxicological analysis [11] and it could not contribute to natural products unknown investigations. Different mass spectral analysis tools, which are proved to be potential platform for HRMS data analysis, are discussed below, with selected, relevant examples. 2.2 RULE-BASED PREDICTION SYSTEMS When there is a lack of spectral library, a wise choice is to make use of molecular structural databases. Fragmentation patterns of compounds can be predicted theoretically using the molecular structure database in accordance with fragmentation rules and for the prediction of fragmen­ tation there are many commercial tools available. Mass Frontier, ACD/ MS Fragmenter, and MOLGEN-MS are three important systems among them [12]. Researchers have utilized these tools, along with the general fragmentation rules wisely to identify the unknown compounds. Hill et al.

Data Processing and Computational Techniques

21

tested 102 compounds, (along with almost 272 other compounds, most of them having the same empirical formula of the test compounds) to deter­ mine their chemical structures by matching the experimentally observed CID fragmentation spectra with chemical database fragmentation spectra. Structures of 65 compounds have been identified thus concluding this as a valid method for the structure identification of unknowns [13]. 2.3 COMBINATORIAL CHEMISTRY 2.3.1 COMBINATORIAL LIBRARY Combinatorial chemistry was originated in the early 1980s. A collec­ tion of chemical compounds, small molecules, macromolecules such as proteins which are synthesized by combinatorial chemistry methods are called combinatorial libraries. They are usually represented as one or more structures having a small number of R-group positions, for each there are lists of alternative groups. They were formerly applied to oligonucleotides and peptides which quickly expanded to include synthetic oligomers, small molecules, proteins, and oligosaccharides. Dependent on the type of library desired, they are made and the three fundamental steps of the combinatorial library method are preparation of the library, screening of the library components and determination of the chemical structures of active compounds [3]. Combinatorial libraries can be of two main types, scaffold-based, and backbone-based. In scaffold-based library, the core structure is retained in all compounds in library and variations are done in additional or modified functional groups and in backbone-based library, certain building blocks (e.g., nucleic acids, carbohydrates) are used [3]. 2.3.2 COMBINATORIAL FRAGMENTATION DATABASE The combinatorial fragmentation database is developed based on experi­ mental fragmentation spectra and finally matching them to a possible substructure of a known molecular structure, and so, it does not consider the rearrangements at the time of fragmentation [14]. Combinatorial fragmentation starts with assigning cost for bond cleavages, depending on bond energy, bond type and bond dissociation energy. Each peak in

22

High-Resolution Mass Spectroscopy for Phytochemical Analysis

the spectra was allocated in the order of minimal cost, to determine the feasibility of bond breakage. Many researchers have conducted to make the enumeration an easy process. A possible and feasible approach was made by constraining the number of cleavages and this concept has inspired the invention of tools such as EPIC [14] and an advanced method named Metfrag [15]. Later, a strategy named MetFusion was introduced by combining Metfrag with a spectral library MassBank. The performance was illustrated using a set of 1062 spectra, achieving a better ranking for the correct compound than while using Metfrag alone [16]. 2.4 MACHINE LEARNING: PREDICTION OF SUBSTRUCTURE Instead of depending on the fragmentation patterns, a fabricated predic­ tion framework works well, where the automated classifiers are employed for the prediction and identification of compounds from the spectra. In this method, a set of numerical features are obtained by the classifier transformation corresponding to the molecular properties of the unknown. By comparing it with the feature vectors of the reference compound, it is possible to identify the substructures and compound classes present. Following and modifying the protocol, many approaches were built. One approach, presented by Heinonen et al. used the predicted feature vectors of LC/MS-CID fragmentation data produced by a kernel-based approach for matching with a huge database such as PubChem. They demonstrated the success of the system by identifying exact structure for almost 65% of the unknowns they have considered [17]. A web server, which can predict the spectra for a chemical structure, annotate peaks in the spectrum of a known chemical structure and identify metabolites from a target spectrum, was prepared by Allen et al. [18]. 2.5 PREPROCESSING PLATFORM-XCMS A number of preprocessing platforms are available by now. As a repre­ sentative of them, let us consider XCMS, a popular, freely available preprocessing approach for LC/MS data of metabolic profiling, which could match and align properties of many samples in a single step. The strategy included: (i) peak detection by applying model peak match filter in sliced LC/MS data; (ii) peak matching, using an algorithm with fixed

Data Processing and Computational Techniques

23

interval-overlapping bins; and (iii) retention time (RT) alignment by fixing the temporary standards and constructing RT deviation contour. XCMS was demonstrated by analyzing 238 plasma samples (all the samples in duplicate) for metabolic study and 6 spinal cord and brain tissue samples for fatty acid amide hydrolase (FAAH) knockout study. This method is good for huge data handling, discovering new comparisons across samples, and aligning chromatographic traces [19]. Another preprocessing pipeline developed by Falcetta et al. by setting up a mass range gate using the mass difference between the compound and its 5d derivatives [20]. For analyzing LC–MS data software is used to name as “MetSign,” where for spectrum deconvolution and peak list alignment a set of data preprocessing algo­ rithms were developed. Due to their ability to provide solutions for peak detection, visualization, peak list alignment, normalization, metabolite putative assignment, and clustering, it can process both the LC-MS and DI-MS data. Another unique feature of MetSign is its ability to analyze the stable isotope labeled data compared to existing bioinformatics tools (Figure 2.1) [21, 22]. Raw data in mzXML format Spectrum deconvolution

Public databases (KEGG, HMDB)

Isotopic peak list

MetSign database

Peak alignment

Peak normalization

Statistical significance

Pattern recognition

FIGURE 2.1 Workflow of “MetSign.”

m/z adn Isotopic peak cluster matching Peak list method for quantitative analysis Temporal analysis

High-Resolution Mass Spectroscopy for Phytochemical Analysis

24

For preprocessing flow injection analysis (FIA)-HRMS raw files and to generate the table of peak intensities “proFIA” software is used which provides innovative algorithms for the purpose. The workflow consists of 3 steps, at first a noise is estimated followed by detection of the peak and finally the peak is quantified, secondly peak grouping was done across samples and finally the missing values imputation is done (Figure 2.2). New indicators which quantify the potential alteration of the feature peak shape due to matrix effect have been implemented by Delabriere et al. In their method preprocessing were fast (less than 15s per file), and main parameter values were easily inferred from the mass resolution of the instrument [23].

Files in mzML, mzData, mzXML or netCDF Centroided FIA‑HRMS files

Noise model construction

Band detection

Expression set R object Peak table in .tsv file

Data and metadata in .tsv files for W4M

Export

Noise estimation

Noise Model Signal matching and imputation Missing value imputation

Signal filtering

Band filtering

Filter estimation

Peak grouping

FIGURE 2.2 Workflow of “proFIA.”

2.6 WORKFLOWS AND ALGORITHMS High-resolution full scan mass spectrometric (HRFSMS) data acquisition utilized the MS-bioinformatics platforms for the determination of the mass and RT of peptides. For synthesizing general data from biospecimens, May et al. introduced an accurate mass and time (AMT) workflow. They have advanced one-step more towards the identification of the proteins and determination of its abundance by utilizing the AMT methodology [24].

Data Processing and Computational Techniques

25

A workflow management system, Taverna was introduced and vali­ dated, and its query and access on MS proteomics data was explained for a representative repository database-PRIDE [25]. An all ion fragmenta­ tion (AIF) approach was considered for the identification of metabolites. A specific in-house mass spectral library was developed by considering accurate mass, MS/MS spectrum, RT, and the product-precursor ion intensity ratios as the control points, which contain 413 compounds [26]. A recent study presented development of an in-house library of flavonoids from the UHPLC-DAD-HRAM-MSn data. The program proceeds with two steps: (i) identification of the flavonoid classes by UV-Vis spectra; and (ii) identification of individual flavonoids from the mass spectral data. The program was validated and the identification accuracy was found to be 88% [27]. Wang and his team intelligently combined the possibilities of combinatorial fragmentation and algorithms to process the metabolite spectrum match, using their database-searching algorithm named MIDAS [28]. To build, run, and share workflows, Workflow4Metabolomics (W4M; http://workflow4metabolomics.orgonline) infrastructure (W4M e-infra­ structure) offers a user-friendly and computationally efficient environment. The W4M 3.0 release provides a total of 40 tools, from preprocessing, statistical analysis, and up to annotation. Advanced LC-HRMS analysis, GC-MS, FIA-MS, and NMR workflows can be easily done since it comes up with new modules [29]. MZmine, an open-source software toolbox for LC-MS data processing was first introduced in 2005. It implemented a simple method for data processing and visualization. The software has been applied to numerous metabolomic analyzes and is also compared with related software packages. MZmine 2 can be downloaded from the project WWW site along with its accessories. It is being applied in metabolomic researches since the current version can process large batches of data for targeted and nontargeted analyzes [30]. 2.7 RETENTION TIME (RT) PREDICTION A comparatively feasible aid for compound identification is to exploit the RT. A database of RTs can be shared across the chromatographic systems easily. An RT prediction model was developed by Creek et al. by applying a multiple linear regression with six physicochemical parameters of 120

26

High-Resolution Mass Spectroscopy for Phytochemical Analysis

standard metabolites. It could eliminate more than 40% of false identifica­ tions [31]. Combination of two approaches named retention projection and back-calculation resulted in a more accurate method for calculating LC retention between gradients and labs [32]. One proposed model of RT database includes the RT’s from different chromatographic systems and it provides a projection model between the RT’s of all possible pairs of chromatographic systems in the database [33]. The relation between RT and the chemical structure is studied by Quantitative structure-retention relationship (QSRR) tool. A linear solvent strength (LSS) theory was used to prepare QSRR models in order to predict the RT, under any gradient conditions [34]. The same group has come forward with an advanced dynamic database for human metabolites, by employing the same platform [35]. Another proposed model for RT prediction, based on the chemical structures has designed from hydro­ phobic subtraction model (HSM) and QSRR [36]. 2.8 MASS SPECTRAL TREES Fragmentation trees are created from the acquired spectral hierarchy data of sequential fragmentation (MSn). In one study, fragmentation reac­ tions efficiently represented the fragmentation, where the nodes stand for fragments and the directed edges represent the reactions between them [37]. The created ‘cheminformatical’ tool-multistage elemental formula generator (MEF)—was checked for its capability of chemical similarity searching, by using a fingerprint-based algorithm named Tanimoto coefficient [38]. Two different MSn libraries were created and their performance was validated by the novel semi-automatic de novo identification tool. They have provided a strong platform for the identification for both known and unknown compounds, along with the structure elucidation of unknowns. Later, the same research group came forward with a follow up for the spectral tree-a pipeline, which utilizes the MSn data of unknown metabolites for the identification of the same [39]. Another algorithm named precursor ion fingerprinting (PIF) was developed for the interpretation and library search of the mass spectra, were structurally related alkaloids were used to demonstrate them [40]. A spectral tree was constructed from the MSn data of these alkaloids.

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The ion substructures, identified for the spectral data is processed with the spectral library to obtain the corresponding potential structure. Thus, a universal MSn spectra library was created to utilize for the identification and structure elucidation of unknown compounds. In one study, the MSn data is annotated with hierarchical trees of the analyte and the approach was demonstrated with the dataset of green tea extract [36]. Altogether, HRMS techniques provide a much better opportunity to get data of the sample. They can provide a complete overview of the product by allowing compound identification, profiling, fingerprinting, dereplica­ tion, metabolite phenotyping, etc. The complete structural characteriza­ tion can help even the structure-based drug design and development. The current review gives special emphasis on the use of High-resolution mass spectrometry compatible with LC in the field of identification, character­ ization, and quantification of bioactive constituents from phytochemical extracts and products. Some essential practical examples are presented to demonstrate the same. 2.9 METABOLOMIC TOOLS Metabolomics is the large-scale study of metabolites and metabolome is a term used for representing metabolites and their interactions within a biological system. It is in the early 70s, metabolite-profiling publications originated from the Baylor College of Medicine [41–43]. At that time, GC/MS was used by these authors to illustrate their concept through the multicomponent analyzes of steroids, and neutral and acidic urinary drug metabolites. They are also coined the term “metabolite profiling” to refer qualitative and quantitative analyzes of complex mixtures of physiological origin [44]. The steps of analysis of metabolomics data or computational metabolomics can be divided into three steps, raw data is preprocessed to the sample by a variable matrix of intensities, followed by the statistical analysis which detects variables of interest and build prediction models, and finally annotation of variables to provide insight into their chemical and biological functions. We can perform statistics and annotation steps in the reverse order to get a first-pass overview of the dataset content by performing an automatic query of metabolite databases [29].

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High-Resolution Mass Spectroscopy for Phytochemical Analysis

2.9.1 IMAGING MASS SPECTROMETRY (MSI) TOOLS Resurgence in matrix-assisted laser desorption/ionization (MALDI)-MS­ based, desorption electrospray ionization (DESI), laser desorption/ioniza­ tion (LDI), and laser ablation electrospray ionization (LAESI)-MS-based tissue imaging has led to new software for computing and processing data. “Spectral Analysis” is a software which can be used through the entire analysis workflow, since it provides a wide range of methods for normalization, smoothing, baseline correction, and image generation to multivariate analysis such as non-negative matrix factorization (NMF), memory efficient principal component analysis (PCA), maximum autocor­ relation factor (MAF), and probabilistic latent semantic analysis (PLSA), for data sets acquired from single experiments to large multi-instrument, multimodality, and multicenter studies [45]. 2.9.2 NUCLEAR MAGNETIC RESONANCE (NMR) BASED TOOLS The importance of multidimensional NMR and hybrid MS/NMR methods in deciphering known and unknowns in metabolomics is discussed world­ wide. It is important to have valuable software for processing and visual­ izing data in the research field. Commonly used software includes Campus Chemical Instrument Center (CCIC), NMRPro, SpiNCouple, Chemical Shifts to Metabolic Pathways (ChemSMP), PROMED, SpeckTackle, NMRmix, and jsNMR. “CCIC” has evolved as an immensely useful resource of NMR-based metabolomics data analysis and metabolite iden­ tification tools (http://spin.ccic.ohio-state.edu/) which contains multiple tools such as Covariance, 1D NMR Query, 2D 13C-1H HSQC Query, 2D 13C-TOCCATA Query, 2D 1H(13C)-TOCCATA Query, DemixC, COLMAR, and Multiple spectra Query [25]. “NMRPro,” a user-friendly web component can be easily incorporated into currently used web applications by enabling a Python package, managed by Django App and SpecdrawJS based online interactive process and visualization [46]. “SpiNCouple” is software having a two-dimensional (2D) 1H-1H J-resolved NMR database from 598 metabolite standards as the backbone [47]. It provides the spectra that include both J-coupling and 1H chemical shift information allowing spectral annotation, especially for metabolic mixtures and options for absolute-quantitative analysis. Without

Data Processing and Computational Techniques

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individual metabolite identification, “ChemSMP” approach identifies active metabolic pathways directly from chemical shifts obtained from a single 2D [13C-1H] correlation NMR spectrum to facilitate rapid pathway mapping analysis [48]. “PROMED” an NMR-based metabolomics tool works in the basis of matching the data of the pattern of peaks rather than absolute tolerance thresholds by using a combination of geometric hashing and similarity scoring, thus helps in compound identification and assignment of metabo­ lites independent of the pH, temperature, and ionic strength techniques [49]. Cross-browser compatible software for spectra visualization “SpeckTackle,” is a custom-tailored JavaScript charting library for spectroscopy data in life sciences which contain library of several default chart types and supports common functionality like spectra overlays or tooltips. “NMRmix” is a tool that supports the creation of ideal mixtures to optimize the composition of the mixtures to minimize spectral peak over­ laps from a large panel of compounds with known chemical shifts using a simulated annealing algorithm. A graphical user interface simplifies data import and visualization [50]. “jsNMR” is a lightweight NMR spectrum viewer providing a cross-platform spectrum visualizer which runs on all computer architectures (including mobile devices) [51]. jsNMR allows for conversion of spectrum data to alternative file formats such as SIMPSON spectrum.csv file and PDF format, in addition to visualization. 2.9.3 TARGETED AND UNTARGETED ANALYSIS TOOLS Targeted analysis tools are milestones for analyzing specific metabolic perturbations under systems of interest by using high-resolution instru­ ments. For visualization, data interpretation, and processing, it is impor­ tant to have efficient software since large-scale targeted metabolomic studies remains an area of considerable interest. Commonly used software available for targeted metabolomic studies were “RIPPER,” “MRMAna­ lyzer,” and “MetDIA.” For MS-based label-free relative quantification for metabolomics and proteomics studies “RIPPER” is used. It has features such as data pre-processing, RT alignment, analyte quantification, and grouping across runs [52]. For automatic rapid processing of large set of multiple reactions monitoring (MRM) based targeted metabolomics data, “MRMAnalyzer,” an R package were used [53]. Data processing steps

30

High-Resolution Mass Spectroscopy for Phytochemical Analysis

include peak detection and alignment, ‘pseduo’ accurate m/z transfor­ mation, check for quality control (QC), identification of metabolite and statistical analyzes. For efficient data-independent acquisition (DIA) data analysis “MetDIA” approach was implemented which allowed targeted extraction of metabolites from multiplexed MS/MS by considering each metabolite in the spectral library as an analysis target. MetDIA allows for detection of ion chromatograms for each metabolite (both precursor ions and fragment ions) in MS2 data along with detection, extraction, and scoring metabolite identifications which is referred as metabolite-centric identification. Untargeted metabolomics has gained considerable popularity allowing for expanded coverage of metabolites in matrices of interest. However, it shows some difficulty in processing data and is tried to solve by using online tools such as Intelligent Metabolomic Quantitation (iMet-Q), nontargeted diagnostic ion network analysis (NINA), MSCombine, and msPurity [54]. “iMet-Q” is a software tool like RIPPER, which performs peak detection and peak alignment, which provide a summary of qualitative results along with reports on ion abundance at both sample and replicate levels. The software also provides detected metabolite peak charge states and isotope ratios for facilitating metabolite identification [55]. Another software NINA shows its ability to summarize all of the fragment ions from the acquired MS/MS spectra which were shared by the precursors and performs post-data acquisition analysis there by determining the nontargeted diagnostic ions (NIs). Once a single compound has been identified de novo NI-guided network using bridging components with two or more NI can be established which can be utilized for sequential identification of the structures of all NIs [56]. 2.9.4 ANNOTATION Metabolite identification or annotation remains a major focal point and area of extensive investigation in untargeted metabolomics research. Recently, several new approaches have been developed to facilitate the identification of unknowns, which are discussed here. Spalding et al. introduced an alternative approach for the identification of unknowns called barcoding MS that is not reliant on full, high-resolution MS/MS

Data Processing and Computational Techniques

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spectra [57]. In addition to barcoding of MS2 spectra, for facilitating identification of unknown, string-based regular expressions of MS/MS spectra can be considered [58]. “iMet” is a web-based computational tool based on experimental tandem mass spectrometry that allows annotation of unknown metabolites. “iMet” MS/MS spectra that identify metabolites structurally similar to an unknown metabolite through a net atomic addition or removal that converts the known metabolite into the unknown one [59]. Plant metabolite annotation toolbox (PlantMAT) is an Excel-based soft­ ware used for the prediction of plant natural products such as glycosylated flavonoids and saponins through combinatorial enumeration of aglycone, glycosyl, and acyl subunits using informed phytochemical knowledge. For metabolite annotation, the custom software allowed operation of an automated and streamlined workflow which has a user-friendly interface within Microsoft Excel. It also increased the chemical and the metabolic space of traditional chemical databases [2, 44]. “FlavonQ,” an automated data processing approach/workflow is specifically oriented towards profiling of flavone and flavonol glycosides with ultra-high-performance liquid chromatography-diode array detection-high resolution accurate mass-mass spectrometry (UHPLC-DAD-HRAM-MS). It performs data format conversion, peak detection, flavone, and flavonol glycoside peak extraction and identification, and generation of quantitative results [60]. For the analysis of glucosinolates (GSL) using UHPLCHRAM/MSn tech­ nology, the MATLAB-based “GLS-Finder,” was developed. GLS-Finder is capable to facilitate both qualitative and semiquantitative analyzes of GSL through [raw data deconvolution, peak alignment, glucosinolate putative assignments, quantitation, and unsupervised PCA [44]. 2.10 PLATFORM FOR PLANT METABOLOMICS: AUTOMATIC DATA ANALYSIS 2.10.1 A FIVE MODULE APPROACH FOR UHPLC-HRMS Analytical hardware’s are capable of capturing robust data sets for many types of biological samples. However, it is a challenge to accurately extract qualitative and quantitative information of number of metabolites using UHPLC-HRMS thereby affecting metabolomic and lipidomic field [61].

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For overcoming these drawback, there are a number of proprietary and freely available methodologies are developed, including AntDAS [62], Mzmine2 [63], XCMS [64] and MS-DIAL [65]. For untargeted metabolo­ mics such as EIC construction, detection of peak, annotation of peak and peak alignment, these methodologies typically integrate the entire data analysis workflow and connect to chemometrics methods. These chemo­ metric methods screen out functionally impactful metabolites which exhibit significant differences amongst various experimental groups. Researchers are still faced with many challenges in practical appli­ cations of these methodologies. There are possibilities to show same biological metabolite for identifying signals, especially for complex plant sample due to the screen out of hundreds of ions based on analysis of variance (ANOVA) or partial least square chemometrics. As a solution to this problem researcher have to identify ions that putatively originate from a single metabolite especially neutral loss and fragment ions manually and off course it is certainly a very time-consuming task. To address this problem Liu et al. developed an ion clustering-based fragment identifica­ tion algorithm with their previously developed data analysis methods [66, 67]. This includes peak detection, time shift, correction and registration modules which provide an integrated data analysis platform for UHPLC­ HRMS based untargeted metabolomics. The platform comprises of five modules: • • • • •

EIC peak extraction; time shift correction; peak registration across samples; peak screening module; and ion clustering-based peak annotation module [68].

2.10.1.1 EIC PEAK EXTRACTION MODULE In this module, the first step is to transform acquired UHPLC-HRMS data files from an instrument into the mzXML file format by using “Prote­ oWizard” software. By using an ion density clustering algorithm [67] and considering the fact that the ions from a metabolite within a small m/z tolerance (0.01 Da) exhibit almost identical m/z values, EICs are constructed where the specific ion density will be higher than any specific

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background noise signal thereby performing the peak detection for each EIC. At first, for baseline correction, a local-minimal value-based baseline drift correction algorithm is introduced. It is followed by the extraction of chromatographic peaks using a Gaussian smoothing-based strategy [66]. Peaks are extracted by smoothing the EIC under different smoothing scales. The next step is to search the ridgelines across successively increased smoothing scales. To characterize each EIC, peak RT and m/z value of the ion acquired at the peak apex are used. Finally, the quantita­ tive information on peak height and area is extracted by using the sum of responses in the elution EIC peak and intensity at the peak apex [68]. 2.10.1.2 TIME SHIFT CORRECTION MODULE It is important to perform time shift correction for each EIC. For selecting the reference sample, a total number of peaks in each EIC is counted, and EIC with a maximum number of components is chosen, and it is impor­ tant that each peak must satisfy m/z and retention tolerances (0.01 Da and 0.5 min respectively). A similarity matrix is constructed by checking the similarity between a test peak and a reference peak using Pearson correlation coefficient values of EIC curves. Based on maximizing accu­ mulated Pearson coefficients in the matrix, Liu et al. aligned all reference peaks simultaneously by searching an optimization path using a modi­ fied dynamic programming (DP) [62]. Aligned peaks are represented as Nodes, on its basis the time shift values for a given EIC are estimated using the linear interpolation function in MATLAB thus resolving time shift problem accurately [68]. 2.10.1.3 PEAK REGISTRATION MODULE AND PEAK SCREENING MODULE Peak registration module classifies EIC peaks corresponding to the same ion from different samples into a group of single ion. Liu et al. developed a nearest neighboring connecting (NNC) algorithm [67] to register EIC peaks that uses the modified RT of each EIC peak obtained from the previous module. According to their RT differences, candidate peaks are

34

High-Resolution Mass Spectroscopy for Phytochemical Analysis

presented in an ascending order and each connected pair is scanned by the NNC algorithm. A group cannot include more than one EIC peak from the same sample. Until EIC peaks cannot be classified further, the scanning procedure of NNC iteratively repeats. Finally, a registered component table is made where EIC peaks in an NNC group are registered with the same identifier. In this module, metabolites are first screened and peaks are identified with statistically significant differences in mean values amongst sample groups using ANOVA. Using obtained bilinear structure ions from a single metabolite can be identified by linear correlation of peak height or peak area values. Peak heights with a minimum covariance determined by Pearson coefficient between two screened peaks is used to eliminate the influence of outlying samples. If the coefficient between two screened ions is above a user-defined value (for ex. 0.9), ions will be temporarily identified and are marked with an identical “Meta ID” [68]. 2.10.1.4 ION CLUSTERING-BASED PEAK ANNOTATION MODULE In this module, it is verified that the ions with identical ‘Meta ID’ come from the same metabolite or not. Liu et al. developed a bottom-up ionclustering algorithm that iteratively identifies the ions that are supposed to originate from a single metabolite. Its first step is to identify isotopic ions (for example [E+H]+ and [E + 1 + H]+) from a putative compound on the basis of an initialized EIC peak shape similarity cut-off value for example 0.9 and RT tolerance for example 0.02 min. EIC peak shape similarity cut-off value for each [E+H]+ ion will be adaptively determined on the basis of its isotopic ions (such as [E + 2 + H]+, [E + 3 + H]+) and/or adduct ions (K+, NH4+, Na+, etc.), are recognized. [E+H]+ ions are clustered to identify its origin using their peak shapes and RT. To verify the identical nature or identical ‘Meta ID’ of ions, the plat­ form returns to the peak screening module. Clustered ions from sample, samples are identified and a derived mass spectrum for the metabolite is finally generated [62, 63, 68]. By using these five modules, it is easy to accurately identify frag­ ment ions from same metabolite through automated UHPLC-HRMS data analysis. However, while comparing with the publicly available untar­ geted metabolomics data analysis tools, some differences are noticed for

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this tool that, it doesn’t require data transformation amongst the different modules for fragment ion identification. MATLAB GUI is freely available software used for fragment ion identification [68]. 2.10.2 XCMS ONLINE A number of preprocessing platforms are available by now. Unlike the web-based tools recently introduced to perform statistical analysis of preprocessed data (MetaboAnalyst and metaP-Server), XCMS Online serves as a solution for the entire untargeted metabolomics workflow [69]. The strategy of XCMS included: (i) peak detection by cutting the LC/MS data into slices and applying model peak match filter; (ii) peak matching across the samples, using an algorithm with fixed interval-overlapping bins; and (iii) RT alignment by fixing the temporary standards and constructing RT deviation contour. The information such as peak areas of all detected metabolite features across analyzed samples and pooled QC sample are arranged as a data table in.txt format. The metabolites are assigned and annotated with CAMERA for isotopes using the couple of specific RT and accurate m/z ratio information. The software detects the peak and further integrates there by correcting metabolites abundances for signal drift effect by fitting a locally quadratic regression model to the QC values. For offline analysis and publication, results and images are downloaded as zip files [70]. 2.10.2.1 WORK FLOW OF XCMS A three-step organization of metabolomic data processing is the primary step in XCMS online software, which includes data upload, parameter selection, and result interpretation (Figure 2.3). User can simply drag and drop their files in the accepted file format through a specific Java applet for sample comparison. The accepted file formats are netCDF, mzData, mzXML, Agilent.d folders [69]. For example, in some analysis the raw LC-MS data were first converted to mzXML files using a convert like ProteoWizard MS Convert and then uploaded to XCMS software [70]. All files are automatically compressed and encrypted through a secure SSL connection before being uploaded. The job can be submitted even before the upload is complete since the file upload will continue in the

36

High-Resolution Mass Spectroscopy for Phytochemical Analysis

background and user doesn’t need to wait for the upload to finish. The data processing will start automatically after the successfully uploaded of all files. During the upload of a file, users will be asked to select a param­ eter set which matches the instrument setup and each instrument has a predefined parameter sets for different instrument setups like HPLC/QToF, UHPLC/Q-ToF, HPLC/Orbitrap, HPLC/single quad MS, GC/single quad MS. Customization of parameter sets can be done in order to change the signal or noise threshold, to adjust the mass tolerance of the identifica­ tion step, or feature detection methods are to be changed, RT correction, alignment, and annotation. The job will be submitted to the system after parameter set selection. Data processing can take from minutes up to hours depending on the data set size while multiple jobs can be submitted simul­ taneously. Proper management of all data sets that have been previously uploaded is an important feature of this system, which can be utilized for additional comparisons, modified, or deleted [69].

Data uploaded

Data uploaded in netCDF, mzXML, mzData, and Agilent .d format. All files are automatically compressed and encrypted prior to being uploaded through a secure SSL connection to the XCMS Online server

Select parameter

Select a parameter set that matches the instrument setup used to analyze the samples. Predefined parameter sets for different instrument setups are available (e.g., HPLC/Q‑TOF, UPLC/Q‑TOF, HPLC/Orbitrap, HPLC/single quad MS, GC/ single quad MS)

View or download results

An e‑mail notification is received after completion of a job and is ready for browsing or downloading. After selecting a finished job from the job list, XCMS Online displays several figures that provide an overview of the experimental results and also serve as a quality control mechanism.

FIGURE 2.3 Workflow of the XCMS online software.

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2.10.3 RESULT INTERPRETATION After a job has been completed, the user receives an email notification, which shows it is ready for browsing or downloading results. Several figures providing an overview of the experimental results are displayed in XCMS online, which serve as a QC mechanism. Non-linear methods are used by XCMS Online for compensation of RT drifts between samples. Before and after the correction of RT, an overlay of all total ion chro­ matograms (TICs) acquired is shown as the visualization and QC of this correction procedure, in addition to the RT correction curves. All TICs are aligned after RT correction and recognized potentially problematic samples with extreme deviations can be removed from the data set. Dysregulated features representing ions whose intensities are altered between sample groups are plotted as “mirror plot” which shows data according to statistical thresholds set by the user for example, p-value ≤0.001, and fold change ≥2. Features that are upregulated are represented as circles in green on the top and features that are down regulated are represented as circles in red on the bottom. The size of each circle corre­ sponds to the fold (log) change of the feature which is having an average difference in relative intensity of the peak between sample groups. Greater fold changes are represented as larger circles and p-values are represented by shades of color where brighter circles show lower p-values. The TICs whose RT is corrected are overlaid in gray in the background of the figure and with a black outline; the circles representing features with hits in the METLIN database are shown. An interactive version of the plot is avail­ able when users scroll their mouse over the circles in the plot featuring statistics and putative identities displayed in a pop-up window. For visualization of high-dimensional data sets, two additional plots are also included namely a multidimensional scaling (MDS) plot and a PCA plot which are performed on the centered and scaled data. The aligned feature table and all graphics along with complete results can be downloaded as a zip file from the overview page. “Browse Result Table” button is used to view the feature table which contain detailed information of individual feature such as statistics, ion chromatogram extracted, details of the spectrum and METLIN assignments. Multiple criteria are available to filter the results, to prioritize features and to facilitate the interpretation. On the basis of fold change, p-value, m/z value, intensity, and RT ranges filtering are done. Isotopic peaks can

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be removed conveniently. The table, which is filtered and annotated, can be saved in TSV format for import into Microsoft Excel or other programs [69]. 2.11 CONCLUSION Analyzes of phytochemicals are done by using a set of data preprocessing techniques by different hyphenated HRMS instruments. It includes rule-based prediction systems, machine learning-prediction systems data preprocessing techniques, metabolomics tools, etc. Online methodolo­ gies are ease to use and user-friendly. In this chapter, we have discussed different data processing methods and its relation to metabolomics, functional genomics, and systems biology. Many of the technologies such as optical spectroscopy, nuclear magnetic resonance (NMR), and mass spectrometry are mentioned briefly. The important role of bioinformatics and various data visualization methods are assessed and summarized. KEYWORDS • • • • • •

combinatorial libraries machine learning mass spectral trees substructures total ion chromatograms workflows

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47. Kikuchi, J., Tsuboi, Y., Komatsu, K., Gomi, M., Chikayama, E., & Date, Y., (2015). SpinCouple: Development of a web tool for analyzing metabolite mixtures via two-dimensional J-resolved NMR database Anal. Chem., 88, 659–665. 48. Dubey, A., Rangarajan, A., Pal, D., & Atreya, H. S., (2015). Chemical shifts to metabolic pathways: Identifying metabolic pathways directly from a single 2D NMR spectrum. Anal. Chem., 87(24), 12197–12205. 49. Dubey, A., Rangarajan, A., Pal, D., & Atreya, H. S., (2015). A pattern recognitionbased approach for identifying metabolites in NMR based metabolomics. Anal. Chem., 87(14), 7148–7155. 50. Beynon, J. H., (1960). Mass Spectrometry and its Applications to Organic Chemistry. Elsevier, Amsterdam. 51. Vosegaard, T., (2015). jsNMR: An embedded platform-independent NMR spectrum viewer. Magn. Reson. Chem., 53(4), 285–290. 52. Van, R. S. K., Higgins, L., Carlis, J. V., & Griffin, T. J., (2016). RIPPER: A framework for MS1 only metabolomics and proteomics label-free relative quantification. Bioinformatics, 32(13), 2035–2037. 53. Cai, Y., Weng, K., Guo, Y., Peng, J., & Zhu, Z. J., (2015). An integrated targeted metabolomic platform for high-throughput metabolite profiling and automated data processing. Metabolomics, 11(6), 1575–1586. 54. Li, H., Cai, Y., Guo, Y., Chen, F., & Zhu, Z. J., (2016). MetDIA: Targeted metabolite extraction of multiplexed MS/MS spectra generated by data-independent acquisition. Anal. Chem., 88(17), 8757–8764. 55. Chang, H. Y., Chen, C. T., Lih, T. M., Lynn, K. S., Juo, C. G., Hsu, W. L., & Sung, T. Y., (2016). iMet-Q: A user-friendly tool for label-free metabolomics quantitation using dynamic peak-width determination. PLoS One, 11, e0146112. 56. Ye, H., Zhu, L., Sun, D., Luo, X., Lu, G., Wang, H., Wang, J., et al., (2016). Nontargeted diagnostic ion network analysis (NINA): Software to streamline the analytical workflow for untargeted characterization of natural medicines. J. Pharm. Biomed. Anal., 131, 40–47. 57. Spalding, J. L., Cho, K., Mahieu, N. G., Nikolskiy, I., Llufrio, E. M., Johnson, S. L., & Patti, G. J., (2016). Bar coding MS2 spectra for metabolite identification. Anal. Chem., 88(5), 2538–2542. 58. Matsuda, F., (2016). Technical challenges in mass spectrometry-based metabolomics. Mass Spectrom., 5(2), S0052. 59. Aguilar-Mogas, A., Sales-Pardo, M., Navarro, M., Tautenhahn, R., Guimera, R., & Yanes, O., (2016). iMet: A Computational Tool for Structural Annotation of Unknown Metabolites from Tandem Mass Spectra. arXiv Preprint,1607.4122. 60. Zhang, M., Sun, J., & Chen, P., (2015). FlavonQ: An automated data processing tool for profiling flavone and flavonol glycosides with ultra-high-performance liquid chromatography-diode array detection-high resolution accurate mass-mass spectrometry. Anal. Chem., 87(19), 9974–9981. 61. Domingo-Almenara, X., Montenegro-Burke, J. R., Benton, H. P., & Siuzdak, G., (2018). Annotation: A computational solution for streamlining metabolomics analysis. Anal. Chem., 90(1), 480–489.

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CHAPTER 3

Dereplication: HRMS in Phytochemical Analysis SHINTU JUDE and SREERAJ GOPI

Research and Development (R&D) Center, Plant Lipids (P) Ltd., Kadayiruppu, Kolenchery, Cochin, Ernakulam, Kerala – 682311, India ABSTRACT Dereplication is a significant strategy that plays a role in phytochemical investigations. While dealing with bioactive phytochemical entities, a preliminary information on the presence/absence of compounds, their potentials and physicochemical natures provide a versatile cornerstone for further characterization, especially when involve a large number of samples or compounds. A tailor-made workflow can be fabricated for the physicochemical characterization, out of the available technologies, datasets, repositories, and other data processing tools. This chapter deals with the dereplication strategies, with necessary examples. Also, bring some idea of the important significant dereplication techniques among the ever-generated workflows. 3.1 INTRODUCTION The natural products, especially those are originated from plant play a major role in many fields such as food, pharma, beverages, nutraceuti­ cals, etc. In the ancient times, victuals were not a big research material. However, education and technology impelled the human kind not to trust anything blindly and to dig out the facts. Now, it is not enough for him to get the things with effectiveness, they have to be safe also. So he started to screen everything—the bioactives, toxins, coloring ingredients, etc., in his eatables. Moreover, herbal remedies with therapeutic properties and even

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the food itself came into action than drugs, and many drugs were happened to source from natural products itself. In addition, many of the synthetic drugs have been taken model from natural compounds [1]. In other words, the border between foods-nutraceuticals-drugs became unidentifiable. In this perspective, there are many studies focused to identify the compounds present in the edible naturals, especially in the traditional therapeutic materials, culinary herbs, and spices. The knowledge of significant bioac­ tive compounds present in the plants impelled to conduct more studies on phytochemicals. However, the screening of bioactive components from plant matrix is laborious as it includes a series of lengthy analysis steps, use of costly consumables, and misleading data from the traditional instru­ ments and so on. Natural matrices are complex mixtures of components and much time and efforts are required for the isolation, identification, and char­ acterization of compounds from them. In new product identification schemes, sometimes these efforts may end up in the rediscovery of known compounds. Much time has been wasted in the area of natural product investigation, for the rediscovery of known compounds. In 1978, when the word ‘dereplication’ was mentioned for the first time, it didn’t create much impact in the related fields [2, 3]. But now, after a few decades, the word act as a synonym for all the screening processes and related techniques for differentiating the already known components from a matrix, by iden­ tifying their molecular formula, molecular weight, structure, bioactivity, and taxonomy. Advancements in the science of instrumentation opened the door to the world of detection and identification, and dereplication of complex natural matrices made the identification and characterization of new compounds easier, as it reduces the chances of false-positive results. In a vast meaning, the term dereplication represents a process flow (Figure 3.1), consisting of: 1. Identification/selection of plant source; 2. Characterization: scheme for extraction and purification, if any, as well as the chromatographic separation and mass spectral data collection of the sample; 3. Bioactivity determination, an optional procedure; 4. Construction/collection of spectral database from the spectro­ metric characterization of reference compounds; 5. Determinations of compound existence and investigation strategies.

Dereplication: HRMS in Phytochemical Analysis

Plant source

Data collection

Processing scheme

47

Database

Structure elucidation

Bioactivity detection

FIGURE 3.1 The process flow for ideal dereplication program.

3.2 SELECTION CRITERIA The strategies for dereplication and discovery of bioactive compounds begin with the proper selection of materials and instruments. There are many systems and approaches were introduced, behalf of the same. Tradi­ tional medicinal practices rely basically on the natural products and their influences categorized the first approach where, the clinically established beneficial traditional therapeutic drugs are investigated for their character­ ization. Here, the only unknown thing is the components involved. A prior knowledge of the herbal preparations leads way for sample preparation and the awareness on treating diseases helps in selecting the procedure and makes the task easier. For example, 88 plant extracts, which were estab­ lished as the traditional medicines for treating snakebites, were screened for their active inhibitors against necrotizing enzymes in snake venoms, and the activity and structural analysis together built up a strong platform for dereplication [4]. Another important study of such kind was the iden­ tification of natural fungicides from Ghanian Uvaria chamae P. Beauv, a traditional antibiotic [5]. A dereplication workflow was successfully aided in the identification of active compounds and mechanism behind the action of plants from the genus Rhodiola L. for the treatment and prevention of acute mountain sickness, used in Tibetan medicine practices [6]. In a second approach, chemotaxonomical/taxonomical data were used for establishing the secondary metabolites of similar nature from related taxa and to derive structure-activity relationships (SAR) thereof. In a strategy applied for the identification of active components of Spatholobus suberectus, the fragmentation pathways are tooled for grouping similar compounds and differentiating structural isomers [7]. The third approach is based on the geographic platforms. All the species in a geographical area are evaluated for the biological activities

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and these results in libraries as well as genetic banks containing a broad and diverse spectrum of bioactive phytochemicals. Many studies from Simirgiotis and team have dealt with the characterization of different endemic species from South America, out of which 5 were handling specifically the species from Paposo Valley, located on the cost of the Atacama Desert [8–12]. Together, these reports form a strong reference for a number of compounds. The next approach was developed as filler in the voids of all these aforementioned methods. In this approach, the information on the biolog­ ical activities of plants and the related diseases or assays is intelligently utilized for the isolation and characterization of active compounds, which have not been studied previously. A study, which involved the character­ ization of phenolic acids (PA) from Salvia miltiorrhiza, was intended to investigate the chemical conversion products of PA’s and their detection [13]. Another study was stimulated by the fact that, the germination of parasite ‘Orobanche cumana’ is induced by the host plant metabolites and only one stimulant had been identified till the time [14]. These studies have executed on the anticipation of the presence of more bioactives in the plants, which could be responsible for the activities, along with/other than the known compounds. The approach stands independent and takes a higher position, because here, the observation, knowledge, and curiosity of the scientist play the key role behind the discovery of plant bioactives [15]. 3.3 CHARACTERIZATION PROCEDURES Many isolation and characterization procedures are outlined for biologi­ cally active molecules. 3.3.1 UNTARGETED COMPOUNDS SCREENING The widely used basic characterization strategy is the ‘untargeted screening,’ which is applied for the identification of major compounds. It is characterized by the complete profiling of all the responding analytes in the sample, which enhances the capabilities of identification of novel compounds. In a non-targeted workflow, the total ion chromatogram

Dereplication: HRMS in Phytochemical Analysis

49

(TIC) is considered for the characterization. In TIC, the major compo­ nents are selected manually or by program and then each abundant peak are examined for their exact mass spectrum, followed by elemental composition. The possible structural properties are assigned by using references and databases such as similarity analysis (SA), hierarchical clustering analysis (HCA), principle component analysis (PCA), partial least squares-discriminant analysis (PLS-DA), and orthogonal projection to latent structures discriminate analysis (OPLS-DA), etc. In some cases, the accurate mass fingerprinting could serve well for confirmation and quality assurance [16–18]. A similar chemometric approach was used for the differentiation of ginseng roots of different origin and different ages [19]. In another study, a workflow consisting of the data acquisition, RT alignment, statistical analysis, and species identification was achieved and resulted in metabolome fingerprinting [20]. However, this approach fails in many cases such as, if the active compound present in trace amounts, or it delivers a synergic effect with any other components, etc. Another hurdle is the reproducibility of ionization patterns, because each HRMS technique facilitates different ionization technique. The availability of standardized mass spectral databases-home-made or theoretical-can accelerate the process. 3.3.2 UNTARGETED PROFILING FOR METABOLOMICS In accordance with the growth of metabolomics, many more strategies were introduced for the untargeted profiling, for the collection of all possible data of compounds in the sample. With the help of an appro­ priate informatics tool, it is possible to extract the needed information to be used for different requirements such as chemical fingerprinting (CF), biomarker characterization, quality assurance, etc., even a long time after data collection. Cai Tie and crew have introduced a strategy based on oligosaccharides profiling for the classification of 52 different Epimedium herbs by the identification of biomarker compounds [21]. Possibilities of correlating the HRMS chemometric fingerprints with bioactivity were successfully utilized in the investigation of antioxidant anthocyanins from six Chilean berries and phenolic compounds from South American fruits as well as shrubs [22–24].

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High-Resolution Mass Spectroscopy for Phytochemical Analysis

3.3.3 ACTIVITY-GUIDED ISOLATION OF ACTIVE COMPOUNDS Another important revolution was the activity-guided isolation. It involves the series of extraction and activity determination. The fractions which show the activity is further proceeded for the re-fractionation. This process of fractionation is continued for the active fraction, which will result in a purified bioactive fraction. The systematic monitoring not only allows the online detection of active compounds, but also verifies the route of negative results. The antidiabetic constituents from Radix Scutellariae are an illustration of this strategy. The study put forward the potential of, three different bioassays, i.e., aldose reductase, α-glucosidase, and radical scav­ enging inhibition assays for the activity profiling corresponding to three different pathways of diabetes, which were correlated to the HPLC separa­ tion in order to obtain the biochromatograms, and the active compounds were characterized by using a platform of HPLC-HRMS-SPE-NMR [25]. The same platform was used for the characterization of isoflavones from Azorella madreporica, antioxidants from Gomortega keule, etc., [26, 27]. There are many technologies and methods were presented to enhance the bioactivity guided isolation process, which will be discussed in the following chapters. Being bioassay-guided fractionation as the core, many programs were developed for the purification of compounds, detection of bioactivity of compounds and their synergic effects, chemical profiling, information regarding false positives, etc. However, here, the activity observed in the extract may not appear in the isolated compounds due to many factors such as degradation, chemical changes, loss of synergy, etc. 3.3.4 CONSTRUCTION OF NATURAL PRODUCT LIBRARIES Another important alternative was the construction of natural product libraries. Here, irrespective of the bioactivities, natural compounds of different chemical structures were isolated and used for building up a library, which may then be used for bioactivity characterization. An ideal library can include the information regarding elemental composi­ tion, chemical structures, fragmentation pattern, etc., and confirmative evidences are added from reference standards. With the help of HPLC­ SPE-NMR, this concept was illustrated by the targeted isolation of compounds from Hubertia ambavilla Bory and Hubertia tomentosa Bory

Dereplication: HRMS in Phytochemical Analysis

51

(Asteraceae). 17 major peaks obtained in the HPLC separation were selected for further investigation, which have resulted in identification of three new compounds and their subsequent activities. These data were used for the construction of a natural product library of the compounds, allowing a simple and advanced leap towards the new isolated compounds [28]. Another notable work was the generation of spectral library of 252 new psychoactive substances (NPS) of different classes and the prepara­ tion of a database comprising chemical and structural details of 875 NPS [29]. 3.4 DIFFERENT TECHNICAL AND INSTRUMENTAL CONCERNS In order to build a characterization platform, it is necessary to obtain the isolated recognition of compounds even in small amounts, exact mass, elemental composition, fragmentation patterns and sometimes, special arrangements also. Therefore, the analytical platforms corresponding to the separation, detection, processing, and structural characterization together form dereplication modules. GC and other thermal techniques solely depend on the thermal properties of the extracts. So, in many cases, they are not used for the separation and ionization for the natural product characterization. Besides, they do not support the screening of broad spectra of compounds with different properties and structures. Most of the dereplication studies have followed a trial and error system of methods, i.e., many modes of hyphenation have executed for a single sample, which produces various results. By analyzing these results, a most reliable combination of instruments and techniques is assigned. For example, in dereplication of Salvia miltiorrhiza, many separation aids such as reverse phase liquid chromatography (RPLC), UHPLC, electrophoresis, etc., sepa­ ration modes such as ion exchange, size exclusion, hydrophilic interaction, affinity interaction, normal phase, reversed phase (RP), etc., and detection techniques such as DAD, MS, HRMS, etc., were employed in different studies, in search of better results. An offline two-dimensional (2D) liquid chromatography-a combination of two orthogonal LC systems-aided with hydrophilic interaction chromatography column and RP column have been proved to be enhancing selectivity and peak capacity [13]. In addition, the hybridization of IT-ToF-MS enables the highly accurate measurements of the ions.

52

High-Resolution Mass Spectroscopy for Phytochemical Analysis

3.5 HRMS AND DEREPLICATION Development of high-resolution mass spectrometry has added color to the picture of dereplication. It could allow the direct identification of struc­ tural formula of compounds present in the biofluids and tissues in a single run. Many researchers have proved HRMS to be a powerful technique for full structural analysis of constituents directly from crude extracts, without further purifications. Dereplication involves the rapid identification and sometimes quantification of known compounds, irrespective of their chemical classes and hence accelerates the new compounds discovery processes. It forms the primary step of many analytical strategies such as chemical profiling, bioactivity-guided purifications, fingerprinting of extracts, etc., and became an inevitable segment in many fields such as genomics, metabolomics, taxonomic identification, biochemistry, phar­ macology, etc. The potential of combining high-speed counter-current chromatography (HSCCC) and HPLC-UV-HRMSn methodologies was demonstrated in the screening of the non-volatile chemical composition of Lippia origanoides. The complexity of matrix was overwhelmed by the specific hyphenation and found useful in characterization of the flavonoid rich specimen [30]. Similarly, the interspecific diversity of active compounds present in different organs of Moringa oleifera was assessed across most of the available species, as part of a study using HPLC separations and mass spectrometric and NMR data [31]. Even a simple open column chromatography prior to the HPLC separation, could exert a multifold synergic purification effect for active components from Azadirachta indica and Melia azedarach [32]. 3.6 DATA INTERPRETATION HRMS provides a huge data, containing information of different manners. Basically, HRMS provides prime information regarding the exact molecular mass. In the advanced forms, it is possible to obtain the elemental compositions to accuracy for mass 0.0001 amu, even in very low concentrations. Structural specificity is linked with molecular mass, and the information on exact mass is the prime data for structure elucidation. According to the dereplication functions, mode of detector readouts can be used in many different strategies, so as to get the results

Dereplication: HRMS in Phytochemical Analysis

53

as per the requirements. If the purpose is a qualitative analysis, the primary intention is to verify the presence or absence of a compound or a number of compounds by incorporating the data with databases or references. Hence, all the available data formats are used for it. For compound characterization, the patterns are selected such that, the structure related data of the analyte to be characterized is enhanced and used for elucidation. Quantitative mode of analyzes require the information related to the both, presence and content of sample, with respect to the reference [33]. In any mode of dereplication, MS-NMR instrument hyphenation furnishes a complete detection platform, being two complementary techniques among the array of detectors. NMR delivers the structure related information even including the arrange­ ment of functional groups as well as the regioisomerism. The hyphen­ ation precisely provides an orthogonal data, which simply increases the confidence by multifold for the annotation of compound structure. Mass spectral data, along with NMR information allows the connections and the identification of even stereochemistry of compounds. Multihyphenated systems leave an ocean of information behind. Utilizing these data in proper way results in recognition of the activity and finally the compounds themselves. Analytical instruments play only the first part of detection in derep­ lication; the rest depends on the processing of the observed data and hence compound databases come into the platform. Analytical instru­ ments, especially HRMS acquire a huge amount of data, and it needs to be processed with proper databases, processing methodologies or reference approaches, in order to derive meaningful results. Various modes of hardware and software were introduced for the data inter­ pretation according to the number and nature of instruments included in the dereplication methodologies. Comparing these experimental data with, references is a standard dereplication procedure. Here, we meet with two terms-databases and data mining. Databases are organized and compiled collection of information, while data mining represents the processing of raw data to obtain meaningful results. Basic facts enclosed with databases are the physicochemical properties of bioac­ tive components, along with their structure, origin, possible methods of isolation, spectrum of activity, etc. Strategies of dereplication based on either identification of compounds or classification into groups are more popular.

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High-Resolution Mass Spectroscopy for Phytochemical Analysis

3.6.1 DATABASES Quality and proper selection of the databases are important parameters in dereplication. Databases are prepared, formatted, and categorized on basis of many parameters. We can see some examples. STN, an online database service introduced databases in chemical abstracts service (CAS), in two formats-’CA plus,’ a bibliographic data­ base of chemical information and its companion file ‘CAS registry,’ which is a chemical substance information database [34]. The information is gathered from authorized documents such as patent publications, journals, dissertations, books, etc. Chapman and Hall’s ‘Dictionary of Natural Products’ is another repository of natural chemicals and their properties [35]. ‘Bioactive Natural Product Database’ presented natural compounds along with their biological activities [36]. ‘Natural product activity and species source’ (NPASS) is a freely accessible database, which included the experimental activity values and species sources as well [37]. An open platform for compound structures was introduced as DEREP-NP, which consists of the structures of natural products of both plant and animal origin [38]. In the database named ‘SuperToxic,’ the compounds from both natural and artificial origin, which were proven as toxic, are included with the description on their structural, chemical, and functional properties as well as toxicology [39]. ‘Supernatural’ is another database with timely improved versions, which provides the structural and physicochemical properties along with the predicted toxicity of bioactive compounds [40]. ‘NAPROC-13’ is considered as a complementary tool for ‘Supernatural,’ as it contains the identification parameters and stereo specificity of natural products from phytochemical studies [41]. ‘Therapeutic Target Database,’ commonly known as TTD provides information of efficacy targets and their corresponding drugs with detailed information on target validation, SARs, clinical, and pre-clinical trials data, etc., [42]. 3DMET is a database of 3D structures of natural compounds, which consists of a self-checking system and two modes for verifying the 3D structures. PlantMAT allows the prediction of plant natural products, enabling dereplication, leaving an opportunity for novel structure discovery [43]. Databases organized with specificity on their discipline are helpful in specific drug development. Cardiovascular disease herbal database (CVDHD) consists of the identification information, molecular prop­ erties, and docking results of compounds from medicinal plants for

Dereplication: HRMS in Phytochemical Analysis

55

cardiovascular-related diseases [44]. Naturally occurring plant-based anticancerous compound-activity-target database (NPACT) provides the bioactivities of anti-cancer natural compounds along with the related cancer cells and their molecular targets [45]. Some databases have arranged the data based on the geographic region of their experiments. NuBBEDB is an example, which is a database of compounds of Brazilian biodiversity [46]. There are many notable works established for traditional Chinese medicines (TCMs). ‘TCM Database@ Taiwan’ facilitates virtual screening by providing 3D compound structures of TCM [47]. The ‘TCM integrative database-TCMID’ is developed based on six modules-prescription, herb, ingredients, disease, target, and drugs, whereas ‘Chinese ethnic minority traditional drug database-CEMTDD’ is composed of modules-plants, metabolites, active components, indica­ tions, targeted proteins, diseases, and mechanisms, along with an access towards herb-compound-disease-target network of mechanism [48, 49]. ‘HIT: Herb Ingredients’ targets’ contains a curated database of molecular targets, their experimental conditions, and observed bioactivity against more than 1300 Chinese herbs [50]. The bioactivity and 3D structures of African medicinal plants were included in AfroDb [51]. In the same way, 3D structure, source, activities, and properties of the compounds from medicinal plants of Cameroonian flora were presented for virtual screening in CamMedNP [52]. A distinct platform for the marine natural product research was provided by MarinLit [53]. 3.7 DATA-MINING TOOLS Many computer-based tools were developed so far, useful in peak selec­ tion, ion extraction, organizing the data, etc., by utilizing molecular struc­ tures, fragmentation patterns, bioactivity, etc., and are generally known as data-mining tools [54]. One interesting advantage for a few techniques among them is the possibility of handling data from different instruments. Some of the tools are provided by the instrument facilitators such as waters (MarkerLynx, MassLynx), Agilent (MassHunter), etc., whereas some others are available publically, such as XCMS, MZmine, etc., [55]. There are data mining tools available which make use of the substructures (e.g., MetFusion), or fragmentation patterns (e.g., ISIS, and FTBLAST) for chemical characterization [56–58]. FingerID deals with the structural

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parameters and ends up in molecular structures [59]. Another important tool is molecular networking, where, the fragmentation patterns of struc­ turally similar molecular species are correlated and used for the detection of related compounds as well as the investigation of molecular interactions [60]. Even the simpler workflows, which depend on the direct MS infusion or MS2precursor data, were proved to be effective in successful dereplica­ tion. An earlier revolution in this field was the development of automated mass spectral deconvolution and identification system (AMDIS), which was tooled for the extraction of pure compound spectra from the obtained real chromatogram [61]. 3.8 DEREPLICATION STUDIES Dereplication studies are of two types, while considering the screening pattern. Many works identify new workflows and use them directly for the dereplication purpose and/or act as templates for future studies. At the same time, some of the studies utilize previously aligned workflows for rapid recognition of the known compounds. 3.8.1 DEVELOPMENT OF DEREPLICATION STRATEGIES FOR FUTURE STUDIES There is a number of dereplication strategies has been introduced on the HRMS platform to be used with different manners of actions and applications, which were demonstrated with many plants. Let us have a look on some relevant and well-documented studies to familiarize with the technologies, instruments, and workflows, which are involved in the path finding dereplication strategies. The genus Rauwolfia was studied extensively for their phytochemical characterization by many instruments including HRMS. They have been experimented under a number of different procedures, by employing the possibilities of ambient ionization, multistage mass analysis, fragmentation, comparison with references, etc. Comprehensive investigation reports are available on the phytochemical components from different organs of the species [62]. Boukhris and his team introduced an on-line dereplication strategy for getting the structural information of phenolic constituents of Anvillea radiate. By proceeding with a dual extraction, dual characterization platform, even the minor, and

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less abundant phenolic compounds were also characterized selectively. Besides, the study provided profiles of each organ separately [63]. Another workflow was developed for the identification of active compounds behind the diabetes mellitus prevention ability of Walnut leaf. The workflow consisted of compound identification by HRMS data, target prediction by chemical similarities and databases, analysis of component-disease target interaction network and confirmation by molecular docking analysis. The presented workflow was demonstrated with the successful recognition of 38 hypoglycemic components out of the identified 130 components [64]. Approaches consisting of ambient ionization in the procedure are compar­ atively easy to execute and rapid. An illustration is given with DESI in combination with literature or reference standard data, for the detection of alkaloids from different organs of three different plants. Results were verified by comparing with those from conventional methods [65]. 3.8.2 ANALYZES USING ALREADY BUILT PLATFORMS Dereplication of compounds from the roots of two species from Lamiaceae family was carried out by a previously established platform. The method consisted of ion trap (IT) mass analyzer and orbitrap mass spectrometer (MS) as two complementary analysis systems. Along, the procedure comprised the collection of data regarding exact molecular masses as well as the fragmentation pattern in both positive and negative modes, comparison of mass spectra and retention times (RTs) to those of standard compounds, data processing by utilizing online available databases and literature data, which have ended up in the identification of 39 compounds from both of the samples. Along with the primary dereplication protocols, a secondary comparison was also made for these two closely related species, using the data of dereplication and antioxidant properties [13]. In another study, DART-HRMS data acquisition, along with multivariate statistical analysis together form a platform for identification and compar­ ison of compounds and thereby the origin determination of heroin [66]. In a similar way, the data acquired by UHPLC-HRMS-SPE-NMR was compared with databases and preceded for multivariate analysis to obtain beneficial information about two species of genus Phyllanthus L. [67]. An in-house developed library of reported chemical compounds from Apocy­ naceae family was used as the dereplication platform for the secondary metabolites of Tabernaemontana catharinensis leaves [68].

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3.9 EFFECTS The major outcome of dereplication results in the hard-less determina­ tion of further procedures in compound characterization. Especially, the removal of Pan Assay Interference Compounds (PAINS)—the interfering compounds during the bioassays-prioritize the process flow in proper channel [69]. Along, the information gathered by different instruments brings light on the different properties of the extract, such as spectroscopic, structural, and biological activities. 3.10 SIDE-EFFECTS As seen above, there are many modes, techniques, technologies, meth­ odologies, etc., are introduced, in relation with dereplication. However, if looking apart from the mainstream, there are strategies developed by the same principles for many other applications. Acquisition of highresolution mass spectra and the data interpretation by pattern recognition platforms as well as databases along with the statistical analyzing tools provides a promising way for elucidating mechanism of therapeutic action of many herbal formulations in animals. Timely variations in the biomarker fingerprint can be the signs of health status and identification as well as correlation of them with references forms the aid for mecha­ nism elucidation. For example, the mechanism of action of Corydalis yanhusuo alkaloid on gastric ulcer was elucidated by dissecting the changes of metabolite profiling. The mechanism of action was presented, including the biomarkers and pathways [70]. Likewise, the mechanism of action of Suanzaoren decoction (SZRD) on treatment of insomnia, jieduquyuziyin prescription on systemic lupus erythematosus, Yinchenhao on liver diseases, Trans-crocin 4 on Alzheimer’s disease (AD) and Dazhu Hongjingtian on acute mountain sickness were elucidated [71–74]. In the same way, stress and reactions of plants also presented. A notable finding in this kind of biochemical pathway elucidation was the demonstration of mechanism of nanotoxicity caused by CuO NPs exposure in plants. The effected pathways were identified to be altered by the exposure and the specific metabolomic changes prove the defense response effects [20]. An extension of the mechanism elucidation can appear as the toxicity evaluation. Under conditions of toxicity, the metabolic profiling represents the pathological patterns and analysis of which provides significant results

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on the toxicity effects of the drugs. Examinations of the biochemical compositions enable the characterization of toxicity, differentiation of its patterns with respect to many factors such as sources and related path­ ways [75]. Aristolochic Acid-Induced Nephrotoxicity in Rats, Chuanwu induced cardiac and neural toxicity in rats, etc., were explained by biomarker characterization approach [75, 76]. An interesting study among them investigated the effects of mode of drug administration in the toxicity effects, apart from a mere explanation of the mechanism [77]. Further­ more, the dosage and tenure of administration play roles in toxicity as well [78]. A new stream of approach, based on the network toxicology and mass spectral data was introduced for deriving the mechanism of action of toxicity [79]. 3.11 PITFALLS One of the major disadvantage faced by the HRMS based dereplication is the variabilities in raw dataset acquired by different HRMS analyzers in terms of ionization methods, which make it hard to create a universal database [80]. HRMS-SPE-NMR is considered as a potential tool for dereplication. However, it is reported that, there is differences in mass recovery among different SPE cartridges with respect to species, making the appropriate selection of tools a major step in the process [68]. Expecta­ tion for an unpredicted activity is another factor to be followed in derep­ lication, which anticipates the known unknowns-compounds with known basic structure, but different chemical moieties. 3.12 CONCLUSION Phytochemical investigation includes the characterization of secondary metabolites, which leads way towards bioactive drugs and formulations. Dereplication enables the identification of known metabolites, thereby reduces possible false-positive results. It also enables structural identifi­ cation of known metabolites present in the complex matrix in a single run. The procedure became advanced with the development of HRMS instruments, allowing the direct detection of molecular formulas of the compounds of interest. Thus it forms a strong guide for phytochemical characterization.

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KEYWORDS • • • • • •

Alzheimer’s disease cardiovascular disease herbal database data mining databases dereplication effect-directed analysis

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76. Dong, H., Zhang, A., Sun, H., Wang, H., Lu, X., Wang, M., Ni, B., & Wang, X., (2012). Ingenuity pathways analysis of urine metabolomics phenotypes toxicity of Chuanwu in Wistar rats by UPLC-Q-TOF-HDMS coupled with pattern recognition methods. Mol. Biosyst., 8(4), 1206–1221. 77. Zheleva-Dimitrova, D., Simeonova, R., Gevrenova, R., Savov, Y., Balabanova, V., Nasar-Eddin, G., et al., (2019). In vivo toxicity assessment of Clinopodiumvulgare L. water extract characterized by UHPLC-HRMS. Food Chem. Toxicol., 134, 110841. 78. De Lima, R., Guex, C. G., Da Silva, A. R. H., Lhamas, C. L., Dos, S. M. K. L., Casoti, R., Dornelles, R. C., et al., (2018). Acute and subacute toxicity and chemical constituents of the hydroethanolic extract of Verbenalitoralis Kunth. J. Ethnopharmacol., 224, 76–84. 79. Li, X. Y., Jin, X., Li, Y. Z., Gao, D. D., Liu, R., & Liu, C. X., (2019). Network toxicology and LC-MS-based metabolomics: New approaches for mechanism of action of toxic components in traditional Chinese medicines. Chin. Herb. Med., 11(4), 357–363. 80. Wolfender, J. L., Terreaux, C., & Hostettmann, K., (2000). The importance of LC-MS and LC-NMR in the discovery of new lead compounds from plants. Pharm. Biol., 38(1), 41–54.

CHAPTER 4

Hyphenation of HRMS with Instruments for Phytochemical Characterization SHINTU JUDE and SREERAJ GOPI

Research and Development (R&D) Center, Plant Lipids (P) Ltd., Kadayiruppu, Kolenchery, Cochin, Ernakulam, Kerala – 682311, India ABSTRACT

Various mass spectrometry instruments have been widely applied in research for phytochemical characterization. HRMS stands distinctly being adaptable with different kinds of ionization techniques and configu­ rations to selectively measure the exact mass of a compound, thus offers valuable information on the physicochemical properties and characteristic minor structural changes. Besides, HRMS often hyphenated to a sensitive detector or separation technique, has provided a steady scaffold for the natural product research. In this chapter, recent advances in the applica­ tions of various separation techniques, e.g., TLC, UHPLC, SFC, CE, etc., along with detectors PDA, DAD, NMR, etc., which are hyphenated with HRMS in the context of chemical screening and identification of plant metabolites were discussed. 4.1 INTRODUCTION Every analytical method or technique possess its own features and the on-line coupling of which allows a combination of analytical provisions and thereby improvement in advantages. The need for rapid and efficient strategies for screening studies has ended up in hyphenation of techniques. Hyphenation is the term denoting the conjunction of different techniques, and the establishment of hyphenated techniques opens up a possibility of customized analytical tools. In the case of High Resolution Mass

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Spectrometry (HRMS), hyphenations provide extra bones in analysis strategies. HRMS provides the molecular formulae of compounds, which act as the base for compound characterization and structure elucidation. By executing fragmentations, a more detailed skeleton of the analyzing molecule is obtained. However, to complete the process and to obtain a very meaningful result, a complementary technique might require. Hyphenation doesn’t place any restrictions for number of technologies to be coupled and allows the appropriate use of more than one separation or detection methods arranged in a series which allows a faster, easier, accurate identification, characterization, and full structure elucidation, and in cases, quantification also. While dealing with the investigation of phytochemicals, the procedure involves their extraction, purification, analyzes, and structure elucidation. However, the complex matrix of plant products negatively affect the feasi­ bility of rapid and accurate results in each and every step of processing. As we have discussed in the foregoing chapters, mass spectrometry (MS) instruments are compatible with a number of ionization sources and configurations which removes the barriers of physicochemical properties of analyte compounds in the analyzes. Thus, HRMS provides a strong platform for the natural product research in every manner, and so the hyphenation techniques. HRMS can perform alone in a significant way in many cases. Besides, a combination of HRMS with separation techniques and even other detec­ tion techniques such as PDA, DAD, and NMR provides more promising results. Rather considering the trends and popularity, requirement plays the role here. Depending on the data needed, the hyphenations can be tailored and the possibilities are enormous. 4.2 BEFORE HYPHENATION: THE STAND ALONE MODE Ambient ionization techniques are the key factor under this title. They act as the buttresses behind HRMS instruments to do the profiling analyzes by its own. Ambient ionization techniques allow different sample introduc­ tion modes which make them capable of completing the product charac­ terization by their own. In the case of other HRMS modes, direct sample introduction is possible with infusion and it enables the direct analysis. In addition, as the name mentions, they are ‘ambient’—can work under

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69

ambient conditions without much sample pretreatments. The commonly used standalone techniques are herewith discussed. DESI-MS allows charged solvent droplets to strike on the sample surface to form the analyte ions from the surface molecules, without a pretreatment, which allows the whole sample system to remain undisturbed and undestroyed. So, it is widely used for the surface analysis, imaging, and in many cases for semi-quantitative analysis. Different herbal mate­ rials like leaf, stem, root, flowers, bark, seed, etc., were examined by DESI to characterize different types of compounds such as alkaloids, diterpe­ noids, diterpene glycosides, camptothecin, etc. [1–4]. On comparing the results obtained by direct ambient technique with that obtained after the extraction and LC separation were similar with reference to the number components, intensities, spectral patterns, etc. [1]. Likewise, the results from DESI detection were double confirmed for the separation and detec­ tion with TLC and TOF, respectively [3]. DESI was successfully used for demonstrating the differences in the active components content in the different organs of the same plant, considering Nothapodytes nimmoniana as a case [4]. While dealing with quality assurance and forensic analyzes usage, HRMS found applications in many ways. In the forensic sector, one of the major achievement induced by HRMS was, the evaluation of the cannabinoids and their derivatives. In majority of the cases, ESI-FT-ICR­ MS served the purpose well. The general colorimetric screening method used for verifying the presence of cannabinoids was closely examined by ESI-FT-ICRMS/CID. By using the instrument layout, the reaction products, mechanism of reaction as well as the specificity and selectivity of the method were evaluated, and verified in presence of polyphenols from other plants also [5]. The same platform of ESI-FT-ICR MS has used for the evaluation of street samples of marijuana, which resulted in the identification of adulterants together with cannabinoids [6]. Another analytical setup of PSI-FT-ICR MS used in finding adulteration in other abused drugs such as LSD, cocaine, etc. [7]. Nonetheless, ESI-FT-ICR MS enabled the development of a platform for the prediction of plant growth time by the chemical profiling of 68 samples of cannabis seeds after cultivation, irrespective of the brand, variety, gender, or type of the seed, used for germination [8]. An important, successful maneuver furnished by DART-Orbitrap MS in the forensic division is the hair analysis for cannabinoids, which

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doesn’t even require the sample preparation and thus allowed rapid screening [9]. DART ionization resembles the mechanism of APCI, and here, it allows the two-stage ionization on small molecular compounds from volatile samples. Moreover, the technique allows direct analyzes of samples in any form such as raw herbal materials, i.e., roots, seeds, leaves, rhizomes, fruits, etc., [10–14], herbal extracts, teas, analytes in solution, flavors, and fragrances, powdered drugs, injections, etc., and there are strategies developed according to the sample formats [15–20]. DART-HRMS was plied for the derivation of mass spectral fingerprints of the biomarker compounds from the psychoactive and medicinally important species – Piper methysticum, Piper betle and commercial products of the two, without any sample preparation steps [21]. The study has demonstrated that, it is possible to determine the origin of plant products by analyzing the unique chemical characteristics. Thus, even the trace amounts of adulterations in the herbal samples were illustrated by DART-MS, having cannabinoids as an example [22]. Rather, DART has successfully accomplished for drug identification [23], chemometric clas­ sification [24], reaction monitoring [17], quantification, quality control (QC) [20], etc. DAPCI allows the ionization in a supported form from chemicals such as gasses and solvents. The scope of application ranges from component identification, quantification, QC origin differentiation, differentiation between plants [25, 26], etc. The technique can be manipulated in many ways, according to the convenience and nature of information. By altering the reagents [27] or temperature in the plasma probe [28], the results can be improved a lot. In desorption corona beam ionization (DCBI), ioniza­ tion occurs by generating reactive species from the helium atoms near the corona, which in turn produce singly charged ions from sample surface. DCBI-MS techniques are used in many forensic cases to determine the adulteration in herbal medicines [29]. The standalone HRMS techniques are proved to be capable of doing the complete parameters of an analysis. However, hyphenation of MS with other techniques, especially separation techniques remarkably improves the analysis data in terms of the selectivity, efficiency, and speed. The following parts deals with some of the significant hyphenation techniques owing to HRMS as a part are depicted here with the help of a few relevant examples. For a detailed outlook, Table 4.1 is given.

Hyphenation of HRMS with Instruments for Phytochemical Characterization

TABLE 4.1

71

Different Techniques Hyphenated with HRMS for Phytochemical Analysis

Hyphenation

Benefits

References

TLC-HRMS

Rapid separation and identification of compounds [32–40]

Frontal elution paper Supports the direct introduction of powder sample [41, 42] chromatography for the elution UHPLC-HRMS

Qualitative and quantitative analysis within small [46–57] analysis time

SFC-HRMS

Purification and analysis of chiral compounds and [58, 59] thermally unstable molecules

CE-HRMS

Works well with small amount of sample, can be altered by the physicochemical properties

[63–78]

LC-PDA-HRMS

Effective dereplication and identification of new compounds making use of synergic effects of different detectors.

[80–88]

HRMS-NMR

Separation and identification along with structure elucidation of compounds

[89–109]

4.3 HYPHENATION WITH SEPARATION TECHNIQUES Natural extracts are complex matrices containing a large number of components with different natures in terms of polarity, pH, thermal sensitivity, etc. Therefore, reinforcing the HRMS readouts with a prior separation will influence the data vastly in a positive way. HRMS could be incorporated with many separation techniques such as TLC, LC, GC, SCFC, and CE. Here, in natural product analysis, GC finds a limited application due to the restrictions for samples in thermal lability and volatility. So, the other techniques are considered for the discussion. 4.3.1 TLC (THIN LAYER CHROMATOGRAPHY)-HRMS TLC is a simple and rapid basic separation technique. Newer tech­ nologies were introduced to improve the efficiency of separation and resolution in TLC. The compound characterizations were made facile by coupling TLC with MS. A TLC-HRMS hyphenation is represented in Figure 4.1.

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HRMS

TLC

FIGURE 4.1

Hyphenation of TLC with HRMS.

In an old study, a hyphenation of preparative TLC with HRMS have tried, which could differentiate a number of compounds and provide data on the compound structures. It was a state of the art at that time [30]. Later, better resolutions and longer development distance were obtained by employing over pressured layer chromatography (OPLC). It is proved that, an OPLC-DART-HRMS works better than conventional HPTLC methods in terms of separation and identification of compounds [31]. However, while dealing with TLC as a separation technique in the hyphenation series, there is a need for the dilution of TLC bands to proceed further to the detections. This dilution can cause a fall in the sensitivity and low mass detection. In this regard, a different approach was introduced by Shariatgorji and his crew, where they have used a TLC-LDI (laser desorp­ tion ionization)-MS configuration, and thereby eliminated the need for any addition of another matrix [32]. In another study, the ion suppression was eliminated by introducing pre-developments of the plate, followed by HPTLC-MSn measurements. The analytes exhibited improved sensitivity as well as stability, and identified different compounds including even monomers to decamers of proanthocyanidins (PAs) [33]. Specific interaction of enzymes is used for the purification of compounds, and one such trial for the purification of β-glucosidase from Cyamopsis tetragonoloba was reinforced by the confirmation from HPTLC-HRMS. Here, the degree of product conversion was confirmed by HPTLC-QTOFMS and the peptide mass fingerprinting was conducted in MALDI-TOF. Thus, in a single study, two different HRMS instruments served for different purposes [34]. Even the minute differences between different species of plants belonging to the same family were distinguished by HPTLC-HRMS [35]. Similar mass fingerprinting was successfully applied to distinguish between different organs of the same plant also [36]. Interpretation of mass spectra resulting from degradation products is super clues towards compound structure. In natural product research, many

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73

strategies are developed on the same. HPTLC-HRMS data were corre­ lated in such platform-eicCluster so that the otherwise hardly found mass signals of degradation products were strongly enhanced. These strength­ ened signals contribute towards the structure elucidation procedures [37]. Similarly, using HPTLC-HRMS, a generic method was developed for the identification of compounds from commercially available botanical samples. Moreover, the quantification potential of the method was demon­ strated with three of the active components [38]. Another hyphenation of TLC was accomplished with DESI-MS for the investigation of alkaloids from herbal dietary supplements, which could identify, characterize, and quantify the analytes, suggesting the method as a quality assurance tool [39]. Coupling of TLC to DCBI-MS was also tried in a study for the direct detection and quantification of herbal alkaloids. Here the DCBI was made strengthen by adding reactive reagent and even the low volatile species were detected rapidly [40]. In some other combinations, TLC appears as a potential part of the biological assay setup, and impart in the investigation of bioactive phyto­ chemicals (refer Chapter 6). However, rather than the potentials, TLC is possessed with some disadvantages such as interfering spectral back­ ground, ion suppression, need of pretreatments, etc., as discussed, some of them are solved in studies, but needed special processes or instruments for the same. These drawbacks were overwhelmed by other separation techniques. 4.3.2 FRONTAL ELUTION PAPER CHROMATOGRAPHY Frontal elution paper chromatography is not much established like other separation techniques. However, in hyphenation with DCBI, it was proved to ameliorate the quality of many analyzes. It supports the powder sample to be introduced directly to the base of an isosceles triangle, which is then eluted by suitable eluent. The target analytes condenses at the tip, which is proceeded for ionization by DCBI. Figure 4.2 illustrates the working principle of frontal elution paper chromatography. The coupling allowed a rapid separation, developing, improved intensities of analytes of interest and less matrix effect. Rather, it facilitates a semi-quantitative potential, which have been demonstrated in many cases of herbal medicines and dietary supplements [41, 42].

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74

HRMS

Frontal Elution

FIGURE 4.2

Hyphenation of frontal elution paper chromatography with HRMS.

4.3.3 UHPLC (ULTRAHIGH PERFORMANCE LIQUID CHROMATOGRAPHY)-HRMS HRMS, when coupled online with the powerful and versatile separation technique UHPLC, renders miraculous results in the field of botanical investigation. It reduced the analysis time, and increased efficiency to furnish information. Figure 4.3 illustrates a simple UHPLC-HRMS hyphenation. One study took the advantage of LC-HRMS for the analysis of the neurotoxic acetogenins namely annonacin and squamocin, which were present in the lyophilized North American pawpaw (Asimina triloba) fruit pulp sample. They have presented the quantification of these afore­ mentioned acetogenins and detection of the isomers of the same with their percentage ratio [43]. The Annonaceous acetogenin-annonacin was identified from Annona muricata and one of its market product samples by employing a MALDI TOF MS. It has worked as a qualitative screening tool with lesser sample preparation, analysis time and without using an internal standard [44]. The qualitative report on alkylamides was produced from in vitro raised plants by using LC-QTOF. The resulted correlation patterns contributed towards the format of tissue culture of bioactive sources [45].

Pump Sample Mobile Phases

FIGURE 4.3

Column

HRMS

Graphical representation of UHPLC-HRMS hyphenation.

Hyphenation of HRMS with Instruments for Phytochemical Characterization

75

In the drift of structural identification, the most investigated samples were from the plants used for the traditional medicines. The combination of HPLC and HRMS have effectively used for the data mining of traditional Chinese medicine (TCM) formulations due to their significant influence in the present day pharma field. In such a study, three different species of the genus Cistanche were subjected to characterization through HPLC-LTQOrbitrap for herbomics research, as they are an important tonic agent in the TCM. The study successfully discovered three species from the same family, Cistanche deserticola Y. C. Ma, C. tubulosa (Schrenk) Wig and C. sinensis (C. A. Mey.) G. Beck to possess with a total of 69 phenylethanoid glycosides (PhGs), 17 out of them being new and 8 of them being the biomarkers [46]. Traditional medicines consist of the crude extract of single or multiple herbs, depending on the conditions. Therapeutic combinations are considered to be a more complex system. Such a complicated matrix is present in Xiao-Er-Qing-Jie (XEQJ) granules, a TCM which contains eight herbal medicines in it. Despite of the complex nature of its matrix, by using HPLC-LTQ-orbitrap XL, 91 chemical compounds were identified from the granules, including different structural moieties such as PhGs, flavonoids, phenolic acids (PA), lignans, iridoid glycosides, alkaloids, and saponins [47]. A method for the speedy, accurate detection and structural characteriza­ tion of Yinchenhao Decoction (YCHD), a classical TCM formulation was developed by using HPLC-Q/TOFMS/MS, which is fit to be used as a QC aid. Find by formula (FBF) algorithms was applied for the screening of YCHD and 77 major compounds from the formulation were characterized [48]. As the first part of a combined in vitro and in vivo study on behalf of the therapeutic potential of Bletilla striata extracts, the ingredient structures were discerned by HPLC-ESI-HRMS [49]. A wise choice of selecting UHPLC-Q-ToF-MS as a guiding aid was made by Dorni et al. for the enrichment of triterpenoids from the ethno medically important Centella asiatica L. [50]. Ridder L et al. searched for the metabolic profile from green tea by applying LC-MSn spectral data. By using the substruc­ ture annotations, they identified 85 previously identified compounds and 24 new compounds with detailed structural information [51]. Interestingly, during the development of a method intended for an integrated identification of phytochemicals, there were many possible modes and strategies of HRMS were tried. Attempts had made to combine HRMS with GC and LC, both positive and negative modes. Using HRMS,

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High-Resolution Mass Spectroscopy for Phytochemical Analysis

ion source fragmentation, MS/MS fragmentation patterns, HRFS spectra, generated empirical formulae, etc., were generated and were used for the untargeted analysis [52]. Effects of extend of drying and mode of extrac­ tion on the yield, total phenolic content (TPC) and total flavonoid content (TFC) were investigated in the mastic tree leaf extracts in accordance with their antioxidant activities, and the UHPLC-HRMS identification had justified the results [53]. The administration of HRMS has been found beneficial in quantita­ tive analyzes also. In a study, a UHPLC-Orbitrap HRMS database was developed to screen, identify, and quantify the antitussive adulterants from herbal medicines. Many possible patterns of HRMS data, such as full scan spectra, exact mass, mass fragments, isotopic data, elemental composi­ tions, mass spectral library, etc., were incorporated in the database, in order to obtain a complete analytical identification platform for the targeted compounds. At the same time, the possibilities of HRFS and MS2 HRMS data along with the assisted analysis of four software programs and a database were utilized for untargeted compounds. Subsequently, a vali­ dated quantification protocol was also established. The efficiency of the database and method as a quality assessment tool was demonstrated with 87 herbal medicine batches [54]. Application of UHPLC-HRMS coupling in quality assurance was further illustrated in finding the illegal utiliza­ tion of phosphodiesterase 5 (PDE5) in natural dietary supplements. A full MS/data dependent MS/MS data acquired by Q-orbitrap was exploited for the markers identification [55]. A similar study was reported from beverages, which handled the determination of PDE5 inhibitors present in the commercial instant coffee premixes (ICPs). The process involved LC-QToFMS for the targeted screening and quantification as well as the un-targeted screening, constituting a strong platform for the adulterants determination in ICPs [56]. The same instrumental setup was utilized for the quantitative analysis of curcuminoids and their metabolites present in yet another crucial matrix-human plasma, presented with a detailed protocol and validation methodology [57]. 4.3.4 SUPERCRITICAL FLUID CHROMATOGRAPHY (SFC)-HRMS SFC is a modified normal phase chromatography where, the mobile phase is supercritical fluid such as CO2. It finds usage in purification and analysis

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77

of chiral compounds and thermally unstable molecules with molecular mass ranging from low to medium (Figure 4.4). These properties, in combination with HRMS resulted in a versatile technique for the analysis of many natural compounds, which could otherwise be affected by the analytical conditions and parameters. One such study employed UHPSFC/ QTOF-MS for the analysis of low molecular weight compounds. UHPSFC, in combination with mass instruments exhibited better performance in terms of sensitivity and matrix effects, than UHPLC [58]. Rather, it allows the ionization with different technologies. In coupling with APCI-HRMS, UHPSFC exhibited potential in screening and structure elucidation of natural, minor, and non-polar bioactive compounds [59].

Sample HRMS

Column

CO2

FIGURE 4.4

Hyphenation of SCF-HRMS.

4.3.5 CAPILLARY ELECTROPHORESIS (CE)-HRMS As the name indicates, capillary electrophoresis (CE) is a combination capillary and electricity for separation purpose. Here, under an applied voltage, the analyte particles migrate and separate through a capillary, based on their physicochemical parameters such as charge, size, viscosity, etc. Together with HRMS, CE was found to be an intelligent combination for the analysis and characterization of compounds from natural products. A basic pattern of CE, in combination with HRMS is presented in Figure 4.5. CE can be coupled with mass spectrometers (MSs) in many formats, namely capillary gel electrophoresis (CGE), capillary zone electropho­ resis (CZE), non-aqueous capillary electrophoresis (NACE), capillary isoelectric focusing (CIEF), etc., [60]. As the coupling of CE with ESI is more common, the potential of this hyphenation was tailored by including

High-Resolution Mass Spectroscopy for Phytochemical Analysis

78

an interface, which can be assigned as sheathless, sheath-liquid, or liquid junction interfaces. Sheathless interface couples CE capillary to the MS directly, maintaining the electrical contact by a conductive metal, an elec­ trode or by a spraying tip. The performance of the system in this case, can be improved by playing with the ESI emitter design, selection of the proper buffer solution, etc. In sheath-liquid interfaces, the separated liquid from CE is combined coaxially with the sheath flow liquid flowing through a capillary or transfer line directing towards the source. The presence of a makeup liquid differentiates liquid-liquid interface [61]. CE high voltage

anode

CE capillary

ESI interface

ESI needle

HRMS

ESI high voltage

Buffer reservoir FIGURE 4.5

Schematic diagram of CE-HRMS hyphenation.

Requirement of very small amount of sample for the analyzes in CE-HRMS combination made it a suitable platform for many kind of analysis patterns such as process development, non-targeted profiling, metabolomics, proteomics, qualitative, and quantitative. Non-targeted profiling and the quantitative data of complete metabolites have a signifi­ cant role in new product researches also. For example, CE-DAD-HRMS was successfully applied for the identification of alkaloids from R. coptidis and quantitative determination of the major three among them. In this study, the compound identification was carried out with both CE-TOF-MS with HPLC-TOF-MS, and demonstrated that, on combining with different separation techniques, these two couplings act as complementary to each other [62]. Cyclodextrin based CZE was developed for the determination of intact glucosinolates (GSL), and was employed for the analysis of broc­ coli based dietary supplements. Considering GSL as the reference, the analysis layout provided a platform for quality assurance [63]. In another case, the profiling of Stemona alkaloids was accomplished along with their

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79

quantification and fragmentation patterns, by using a NACE-ESI-IT-MS having a sheath liquid interface [64]. A proper differentiation between different isoforms formed by the glycosylation of cellobiohydrolase 1 was achieved by the coupling of gel isoelectric focusing and CE with HRMS [65]. Both qualitative and quantitative profiling of a number of active constituents from herbal extracts was fulfilled by CE-HRMS. By using CE-TOF-MS, the changes of sensory attributes and quality parameters, which are specific to the storage conditions of vegetable bean edamame were proved to be related to its change in metabolic profiles, especially in the amino acid levels [66]. The metabolic study of pineapple leaves demonstrated Crassulacean acid metabolism by the simultaneous evalua­ tion of carboxylic acid and amino acids [67]. In another study, CE-TOF-MS in combination with principal component analysis (PCA) was used for the identification of metabolite profiling and characterization of the six different herbs included in a TCM named Toki-Shakuyaku-San [68]. Different kinds of fruits and fruit products were examined with the CE-HRMS system and the data found useful to identify the fruit of origin, which has led to an important finding of adulteration in a fruit product from the market [69]. A number of varieties of flavan-3-ols were identified in the seeds from the pomace of the red grape vinification of Vitis vinifera (Cabernet Sauvignon) by using chiral CE and LC-ESI-FTICR-MS. Among the phenolic compounds in grape seeds, 251 different flavan-3-ol compounds were distinctively identified with elemental composition and the privilege of chiral CE resulted in identifying even the exact enantiomers resulted from wine making [70]. Besides, the same instrument combination was successfully utilized for the qualitative and quantitative determination of isoquinoline alkaloids present in Corydalis species. PCA processing of the data allowed the production lot discrimination of samples [71]. The CE-HRMS supported analysis of Arabidopsis extracts provided favorable conditions for minimized ion suppression and isomer separation, along with a better limit of quantitation like 80 nM of the analyte from 33 pmol/g of fresh plant weight [72]. By including an enzymatic digestion to the CE-UHPLC-HRMS hyphenation, it is possible to analyze even large proteins [73]. By immo­ bilizing the enzymes on the column capillary wall, protein diffusion is achieved within a short span of time, with very low flow rate. The mode of immobilization can be differed such as specific or non-specific adsorption,

80

High-Resolution Mass Spectroscopy for Phytochemical Analysis

magnetic, non-magnetic, monolithic, or covalent packing, narrow bore capillaries or microfluidic channels, etc., [74–77]. In connection with HRMS, they are proved to be efficient enough for the loading of small amount of proteins and the online coupling is associated with lesser time of analysis [77]. Furthermore, the separation could achieve up to proteo­ form level, allowing the accurate assignment of protein isoforms [78]. 4.4 HRMS IN HYPHENATION WITH OTHER DETECTORS The conjunction of more than one detector would allow a synergic effect in the HPLC results, as the detectors complement each other. One such attempt was the phenolic profiling study on the matrices involved in the oil processing of Olea europaea L. (European olive) using UHPLC-DAD­ ESI-QTOF combination. Six matrices were subjected to the analysis using HRMS-QTOF Synapt MS, from which, 80 different polyphenols were identified and characterized on the basis of analysis data [79]. A research on Brassica napus L. var napus (rapeseed) tried to identify the phenolic compounds in the crude methanol extract of the seeds by using HPLC­ PDA-ESI (-)-MSn/HRMS. 91 flavonoids and hydroxyl cinnamic acid derivatives were detected in the analysis, proving that, HPLC-PDA–ESI (–)-MSn/HRMS (QTOF) combination is a highly efficient technique for chemical identification and plant phenolic analysis [80]. Lin et al. identi­ fied and characterized 209 different phenolic compounds from Brassica juncea Coss variety (red mustard green) using a platform of UHPLC­ PDA-ESI/HRMS/ MSn. They have used an LTQ Orbitrap XL MS for the successful screening of compounds including anthocyanins, flavonol glycosides, and hydroxycinnamic acid derivatives out of which almost 100 compounds were reporting for the first time in Brassica plants [81]. A series of analysis methods were derived for the bioactive components of the medicinal mushroom Antrodia cinnamomea, making use of UHPLC/ DAD/qTOF-MS, UHPLC/UV, supercritical fluid chromatography (SFC)­ MS, and ion chromatography coupled with pulsed amperometric detection (IC/PAD). A QC device for the vital triterpenoids ergostane and lanostane was prepared and applied for 15 batches of the species [82]. Characterization of cytotoxic secondary metabolites from the crude extracts of small scale fungal cultures were proved to be possible by a UHPLC-PDA-HRMS-MS/MS methodology. A short timed qualitative

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analysis has developed with high resolution and mass accuracy using LTQ Orbitrap XL MS which results in the detection and identification of trace amount of compounds in the crude extracts [83]. Another work reported the antifungal activity of the roasted hazelnut (Corylus avellana L.) skin (RHS) extract and its sub-fractions against Candida albicans SC5314 pathogenicity. The polyphenols, mainly the bioactive PAs involved in the activity are chemically characterized using a combination of HPLC-UV and HRMS. The analysis setup consisting of linear ion trap (IT)-Orbitrap hybrid mass spectrometer (LTQ OrbiTrap XL) for both the direct flow injection analysis (FIA), and chromatographic analysis was appropriately used for portraying the metabolic profile and structure elucidation of the determined PA types [84]. An endophytic fungal named Aspergillus iizukae, isolated from the leaves of milk thistle (Silybum marianum L.), was proved to contain three flavonolignans-Silybin A, silybin B, and isosi­ lybin A, with the help of LTQ Orbitrap XL mass spectrometer, hyphenated in UHPLC-PDA-HRMS-MS/MS. The isolated compounds were found to be the same compounds of their host plants and this vital information could pave way for many chemical and evolutionary studies [85]. A droplet-liquid microjunction-surface sampling probe (droplet-LMJ­ SSP) was coupled with UHPLC-PDA-HRMS-MS/MS, in order to develop a protocol for the analysis of secondary metabolites from fungal cultures. A set of mutually supportive data, such as separation, RT, MS data, and UV/ vis data were collected by exploring the analysis setup including DESI­ MS. The setup enabled the dereplication of different fungal cultures along with their identification, separation of isomers and mapping of secondary metabolites without any sample preparation [86]. Extraction conditions are sometimes the most important part of process optimization. With the help of TLC-HPLC-ELSD-DAD-HRMS, a simple optimization procedure was demonstrated for the pressurized fluid extraction (PFE) of Eugenia uniflora L. The chemical composition and biochemical activity were examined with the same instrumental setup [87]. A modified version of the above-mentioned hyphenation was fabricated as HPTLC-HPLC-DAD-ELSD-UHPLC-HRMS-GC-MS, for the fingerprinting of four plant organs of hybrid rose variety ‘Jardin de Granville,’ consisting of a wide range of molecular families. A subsidiary data of polarity, existing plant organ, and extraction solvent corresponding to each compound is provided along with a platform of quality assurance parameters [88].

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4.5 HRMS-NMR AND MORE HRMS and its hyphenation with other techniques were evidenced as potent contributors in the structural characterization of compounds, even if they are unknown to date or present in low concentrations in the sample. Coupling of HRMS with NMR, the universal detector was a turning point in the field of structural analysis. The range of structural identification provided by the combo was beyond expectation-complete structural char­ acterization for the isolated compound was made possible. Some studies are found to be interested as they do not search for just the components present in the plants, but give an idea about the activities of compounds present in it. Some of such studies are tried to discuss in this section. Pseudoxylaria sp. X802, generally considered as a stowaway fungus was investigated for their capability to produce bioactive metabolites during the co-cultivation with different fungi. Using the NMR-MALDI-TOFMS analysis identified the structural characteristics of six new cyclotetrapeptides, pseudoxylallemycins A–F (1–6) [89]. A novel limonoid named Tooniliatone A, with an unprecedented 6/5/6/5 tetracarbocyclic framework was isolated from Toonaciliata Roem. var. yunnanensis. LC-HRMS-NMR was used to characterize the structure and to confirm it as a genuine natural product [90]. In another study, three new sesquiterpene lactone dimers named dicarabrol A, dicarabrone C and dipulchellin A were identified from the whole plants of Carpesium abrotanoides. The structure elucidation was completed with the help of NMR, HRESIMS, and X-ray crystallog­ raphy [91]. Sixteen new limonoids named Entangolensins A-P, having great variety in the frameworks were distinguished from the stem barks of Entandrophragma angolense and the structure were elucidated by HPLC-HRMS-NMR-ECD [92]. A research has proved the aforementioned fact by investigating a crude ethanol extract of Carthamus oxyacantha M (wild safflower) for the screening of compounds using two methodologies-traditional fractionations by VLC followed by HPLC and another series consisting HRMS as HPLC-PDA-HRMS-SPE-NMR. By including SPE (solid phase extraction) fractionation in the workflow, the whole process was acceler­ ated by the reduction of interfering compounds. Moreover, the system was successful in the identification of 15 compounds and was beneficial by means of labor, cost, and time [93]. In another case, the identification

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and structural characterization of isobaric iridoid glycoside regioisomers from Harpagophytum procumbens DC was conducted by LC-DAD-MS/ SPE-NMR [94]. In a recent study, nineteen known compounds along with two new isoflavanones were isolated from Erythrina brucei. The structural char­ acterizations were made with NMR-CD-IR-ESI-HRMSn configuration [95]. Han et al. presents the isolation of two novel alkaloids-robustanoids A and B from Hainan robusta coffee (Coffea canephora) beans and the complete structure elucidation using HRESIMS-IR-NMR-electronic circular dichroism (ECD). The structure was confirmed by a total synthesis of both the compounds. They have also successfully proved the comparable α-glucosidase inhibitory activity of robustanoids B [96]. Comprehensive chemical characteristic information on Molopanthera paniculata Turcz, gathered with HRMS-NMR could support the recent classification of Posoqueria Aubl. and Molopanthera in a new single tribe Posoquerieae [97]. A double HRMS study was conducted for the structural identifica­ tion of eleven newly isolated phthalide derivatives from the rhizome of Ligusticum chuanxiong. All the structures were ascertained by UV, IR, HPLC-Q-TOF, LCMS-IT-TOF, NMR, and ECD spectra [98]. NMR-HRESIMS-UV-ECD-IR hyphenated analysis setup was used for the structure elucidation of nine new compounds discovered from the roots of Lycium chinense Mill. Determined the α-glucosidase inhibitory activity of new compounds including 1 flavane, 1 amide, 1 sesquiterpene, 3 lignin glucosides, and three phenolic glucosides [99]. A bioactivity guided isolation of oxypregnane-oligoglycosides, commonly known as calotroposides was carried out from the roots of Calotropis gigantea (L.), in search of anti-cancer drugs. NMR-HRMS based dereplication of the study material provided the dataset of one new and six known calotroposides, and the structure elucidation was completed by HPLC­ UV-IR-HRMS-NMR [100]. Two rare Chloranthus species-C. oldhamii Solms-Laub and C. sessilifolius K. F. Wu – have been investigated for their signature compounds and the isolated marker compounds found to have a distinctive structural framework was studied for the anti­ neuroinflammatory activity [101]. The chemistry of new compounds identification has advanced to a greater distance by the introduction of HRMS-NMR combination. One example was the identification of new bioactive secondary metabolites

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from Platanus species. The isolation and structure elucidation were carried out by the instrument combination [102]. In the same way, 17 new compounds were isolated from Citharexylum spinosum L., four of them being remained undescribed to that time. Yet, their isolation and structural characterization were carried out by UHPLC-HRMS­ NMR [103]. Following the similar pattern, alkaloids from Narcissus pseudonarcissus L. cv. Dutch Master fresh bulbs, triterpenes from Echi­ nops spinosissimus Turra subsp. spinosissimus, phenolic compounds from Rhodiola imbricate, isoflavans from Erythrina livingstoniana, flavanones from Erythrina livingstoniana, etc., were characterized [104–108]. In case of Erythrina livingstoniana, along with structure elucidation, different possible biosynthetic pathways were also estab­ lished [107]. Differentiation of the compounds from different organ tissues of the same plant is another notable achievement by using UHPLC-HRMS NMR [109]. A progressive and complementary screening strategy was introduced by combining HPTLC-HPLC-DAD-HPLC-ESI-HRMS for the phyto­ chemical characterization. The rapid access to the molecular classes by HPTLC guided HPLC analysis of polyphenol compounds in a highly resolved and refined way. DAD recorded characteristic absorbance of each corresponding compound, while HRMS allowed the mass detection and identification of compound [110]. The same instrumentation was used in a different format in another study where the TLC and HPLC-DAD parts served for the fractionation and semi-preparative isolation of compounds. Further, HPLC-PDA-SPE-NMR in two configurations was performed, in the first case, it was a purification technology, and in the second case, it has coupled with HRMS and proceeded for mass measurements towards compound identification. In each step, NMR played a role in structure elucidation [111]. Both identification and structure elucidation of major constituents from Spondias tuberosa fruits was accomplished by different configurations of HPLC-PDA-ESI-MS and UHPLC-TOF-HRMS along with NMR [112]. Identification and structure elucidation of compounds provide many details on the nature and activities of the same. In many studies, this kind of correlation was made, rendering a wide view on the properties. The antioxidant activities and polyphenolic content of Castanea sativa were paralleled with its phytochemical contents as profiled by LC-ESI/

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LTQOrbitrap/MS/MSn-NMR. Isolation, class identification and structure elucidation-everything have executed by the single hyphenation [113]. Another important identification process made by LC-HRMS/MS-NMR is in enzymatic hydrolysis of oleuropein. The regioselective hydrolysis using two different enzyme preparations had produced different biological active compounds according to the substrate specificity of enzymes and these tailoring were confirmed by the instrument hyphenation [114]. Simi­ larly, the structure elucidation, along with the determination of absolute configuration was another important application. Differentiation of diaste­ reomers is substantial, as the defined activities will be different for them and hence the therapeutic decisions can be evaluated precisely without errors [115]. During the research on Salaciastaudtiana Loes. ex Fritsch., many active compounds were isolated and identified, and their structures were elucidated with relative configurations by HRMS-NMR-XRD. The structure-activity relationship (SAR) of the active compounds was also established [116]. Configuration assignment could done up to epimer differentiation [117]. An HRMS-based metabolic platform and biochemometric statistical approach were bridged with UHPLC-UV-HRMS, in order to identify the possible anti-cholinesterase compounds from different Zanthoxylum species. Findings from this approach were further verified by the biodirected isolation [118]. 4.6 CONCLUSION Hyphenation of instruments provides a multifold improvement in producing data, due to the synergic effect of techniques used. Most of the acclaimed properties of HRMS, such as sensitivity, resolution, isomers separation, etc., are enhanced by coupling with other separation techniques. In combi­ nation with other detectors, HRMS allows the complete characterization of the analytes of interest, including their structure elucidation, even up to confirmations. Altogether, the hyphenation of instruments keeps them in an advanced position in the natural product research and drug discovery programs.

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KEYWORDS • • • • • •

capillary electrophoresis capillary isoelectric focusing desorption corona beam ionization electronic circular dichroism frontal elution paper chromatography hyphenation

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CHAPTER 5

High-Resolution Bioassays as Preparation Screening Techniques SHINTU JUDE and SREERAJ GOPI

Research and Development (R&D) Center, Plant Lipids (P) Ltd., Kadayiruppu, Kolenchery, Cochin, Ernakulam, Kerala – 682311, India ABSTRACT In any field that deals with phytochemicals, their characterization is an important part as the basic factor is to achieve a bioactive compound or an extract rich in bioactive components. Therefore, the procedures indulged in the same were supposed to support the aim. Bioassays are meant to find out the effect of analyte on biological systems and hence deliver direct results on the bioactivity of the extract of interest, which allows the rapid fractionation and purification of the natural product extract. In addition to the fractionation procedure, it serves well for providing a first-line view about the activity nature also. In phytochemical characterization using HRMS, bioassays serves as a preparatory technique, which is detailed in the chapter. 5.1 INTRODUCTION Mother Nature provides remedies for many of our troubles, and the related questions are well answered by plant secondary metabolites. Many attempts have been made to develop effective methods for the investi­ gation of potentially bioactive molecules from herbal sources and have resulted in the form of products, methods, technologies, and many more. One important category among them is bioassays. With many add-ons invented later, they present themselves as rapid, low cost, and streamlined approaches for bioactive compounds determination.

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Bioassays can be defined basically as the analytical procedure to determine the potency of any substance on biological systems such as antigen-antibody reactions, living cells or tissues, living animals, agricul­ tural systems, etc. Here, the efficacy of the substance against the biological system is measured as equivalents of some standards. Bioassays are clas­ sified under various categories depending on different peculiarities such as sample size and nature, experimental design, target life forms, and the mode of response produced [1]. It can be carried out in different systems, ranging from subcellular systems to whole animals. Considering all these natures together, bioassays are classified into two primary and secondary. Primary bioassays allow the testing in a number of samples within short time and provide basic information on the activity of the sample of interest. The lead compounds obtained from the primary bioassay are investigated in detail, in order to produce specific and comprehensive data and the process is termed as secondary bioassays. Bioassays can be tailored for many purposes depending on the condi­ tions and requirements. They can act as guiding procedures and can be the major part of the isolation processes to isolate the active components. Anyhow, in the new era, this pave way to many doors such as drug designing and development, quantification, and quality assurance of active compounds. Bioassays are found to be easy as well as rapid and have been tooled as the mode of exploring pharma activities such as active compound isolation and identification. Here, the sample is primarily fractionated by some separation techniques, and the fractions are submitted for bioassay screening to distinguish both the active components and their activities. The introduction of different types of chromatography allows an open system to conduct such screenings in an effortless manner. By further hyphenations with HRMS, they furnish a strong team, so as to elucidate the structure and identify the active compounds. To justify the title, the chapter discusses different bioassays working well in phytochemicals. The procedure for bioassay analyzes consists of an analytical scale HPLC elution and the micro-fractionation of these eluates (as a function of time) into microplates, followed by bio-assaying of the content of each well. A biochromatogram will result, which can easily correlate with the HPLC chromatogram and can match the bioactivity of each component. The coupling of fractionation and bioassays can be of either way-it can be a bioactivity guided fractionation, or a fractionation followed by bioactivity investigation. A biochromatogram, along with databases or hyphenated

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techniques such as NMR, HRMS, etc., can serve as a perfect library to identify the unknown compounds. 5.2 BIOASSAYS AS SCREENING TECHNIQUES Let the name be dereplication, high throughput screening or whatever, all the analytical procedures involved in the processes are aimed towards the investigation of bioactive ingredients in the extract. It is not advis­ able to introduce the crude extract directly to the analytical instrument, as the matrix may interfere in our concerns. So, bioanalytical screening techniques have been introduced as a remedy to reduce the intrusion of complex crude matrix in the active component characterization. Many researchers have conducted a pre-purification of the extract, which could have an impact on the number of false identifications or undetected minor bioactive compounds. This step, if preceded with a ‘target guided’ manner, can accelerate the process in a positive way. In addition, the quality and bioactivity of natural products are ensured by bioassays in many studies. Intelligent use of biomarkers allows effective target identification too. Many researchers make use of high-resolution bioassay prior to the hyphenated analysis setup “HPLC-HRMS-SPE-NMR,” in order to discern the individual components’ pharmacological activity and then to derive the structure. This coupling of instruments has proven to be very effective that, in the first step, the bioactive fractions will be chosen and in the second step, the characterization is conducted only for the selected fractions. This one additional step could cut down the tedious time consuming screening steps and allows a simultaneous biological and chemical screening of extracts. A schematic representation is given in Figure 5.1.

FIGURE 5.1 Bioassay: high throughput screening, where, a tray of minimum 96 wells is used for monitoring the reactions and responses of the test samples against assay reagents.

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5.3 BIOASSAYS IN CURE FOR LIFE STYLE DISEASES Nowadays, the number of sufferers of lifestyle diseases is increasing like anything. Type 2 diabetes acquires more attention among them, as the progression of disease is very rapid and risky as it causes secondary comorbidities. Modern medicines for type 2 diabetes have found to cause some side effects also [2–5]. At this point, natural remedies for the disease got much recognition and many studies have investigated for the antidiabetic constituents from nature. Most of the natural antidiabetic constituents possess the ability to suppress the conversion of carbohy­ drates into glucose in the gut, or to inhibit the absorption of glucose from the intestine. However, the real hurdle is to isolate the active compounds from the complex natural herbal matrices. A simple and advanced way for this is to use bioassays such as α-glucosidase (AGH) inhibition assay, protein-tyrosine phosphatase 1B (PTP1B) inhibition assay-amylase inhibition assay, etc., in order to separate the active constituents from the crude extract. A major consideration of high-resolution bioassays in herbal therapeutics is the separation, identification, and structure elucidation of active compounds. Hence, much of these assays are utilized to pilot the hyphenated analysis layout HPLC-HRMS-SPE-NMR. 5.3.1 ΑLPHA-GLUCOSIDASE (α-GLUCOSIDASE) INHIBITION ASSAYS α-glucosidase (AGH), present in the enterocytes of jejunum is a key enzyme, which catalyzes the hydrolysis of starch, oligosaccharides, and disaccharides into monosaccharides and enhances the absorption of glucose. An AGH inhibitor can delay these activities and can downregu­ late the absorption of glucose and can control the after meal insulin levels. As the AGH inhibitors can serve as the first line therapy for diabetes, their natural resources are studied extensively. One easy, straight cut and effi­ cient strategy for this is to use AGH inhibitor bioassay. These bioassays allow the simple, rapid isolation of AGH inhibitors distributed all around the globe. The proven incidents of AGH inhibitory activities of phytochemicals delivered the provisions for utilization of bioassays in this regard. One of the first studies has used bioassays hyphenated with HPLC-SPE-NMR for AGH inhibitors identification, by using apple peel as an example.

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Five compounds were identified to be potential, among which, one compound-reynoutrin has no precedent studies of AGH inhibition activity [6]. HPTLC-AGH inhibitor bioassay was successfully used for the identi­ fication of AGH inhibitor compounds from cherimoya fruit (C. cherimola Mill.). Three compounds were found to be AGH inhibitors and were chemically verified as phenolamides, among which, one was identified for the first time from the fruit [7]. A bioassay guided AGH inhibitory activity study was conducted for the stem of Vigna angularis. Sixteen compounds were found to be the bioactive components and they were proceeded for structural characterization by NMR and HR-ESI-MS data. Among the identified bio-actives, one was a new compound and another one was found in a natural source for the first time. Along with the activity of separated components, the study provided structure-activity relation­ ships (SARs) of each inhibitor with AGH from molecular docking study as well [8]. Leaves of Clinacanthus nutans are rich source of potential inhibitors with assured AGH inhibitory activity, as evidenced by the bioassays. The compounds, acted as AGH inhibitors were identified as “N-Isobutyl-2-nonen-6,8-diynamide,” “tabanone,” “1,’2’-bis(acetyloxy)­ 3,’4’-didehydro-2’-hydro-β, ψ-carotene” and “22-acetate-3-hydroxy-21(6-methyl-2,4-octadienoate)-olean-12-en-28-oic acid.” While the in vitro assay proved the bioactivity of compounds, in silico technique provided evidence for their synergic activity and molecular docking provided binding modes of these compounds with ABH [9]. Eder Lana e Silva and coworkers identified six AGH inhibitors and nineteen other metabolites from the leaves of Eremanthus crotonoides by high-resolution AGH inhibition profiling combined with HPLC-HRMSSPE-NMR, seconding the importance of the species as a remedy for type 2 diabetes [10]. Four compounds from the leaves of Crataegus oxyacantha L. (Hawthorn) were identified as AGH inhibitors with LC-DAD-ESI-MSn and structures of the same were affirmed by sustained off-resonance irra­ diation collision-induced dissociation (SORI-CID) data from FT-ICR-MS [11]. Twenty-two lanostane-type triterpenoids showing AGH inhibitory activity was isolated from the fruiting bodies of Ganoderma hainanense, by using in vitro α-glucosidase inhibitory assay, whose structures were elucidated by HR-ESI-MS-IR-NMR, and their SAR was established [12]. Research for bioactive compounds takes man to anywhere, even into the deeps. AGH inhibitory properties of sea aster (Aster tripolium L.) and searocket (Cakile maritima Scop.) were studied using high-resolution

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AGH inhibition assays followed by HPLC-HRMS-SPE-tube transfer NMR. Three AGH inhibitors were identified from sea aster and structural characterization was done by asserting micrOToF-Q II MS in the hyphen­ ation [13]. The same analysis framework was used to analyze a total of 57 crude extracts from 19 different edible seaweeds for their AGH inhibitory constituents. Two classes of bioactive compounds, phlorotannins and fatty acids, were identified to be present in the extracts from brown seaweed, which showed the higher AGH inhibitory activity among all the analyzed [14]. Myrcia palustris DC. (Myrtaceae), a renowned traditional antidia­ betic agent from Brazilian forests didn’t have much documented history on its active constituents. In 2015, Wubshet et al. reported the isolation and characterization of AGH inhibitors from the leaves of the plant, by employing AGH bioassay in series with HPLC-HRMS-SPE-NMR. Out of the 20 major compounds, five were evidenced as AGH inhibitors, including two well known AGH inhibiting flavonoid myricetin and quercetin, along with three unprecedented inhibitors-casuarinin, myricetin 3-O-β-D-(6”galloyl)galactopyranoside, and kaempferol 3-O-β-D-galactopyranoside [15]. A synergic potential of a combination of two different bioactivity profiling techniques-high-resoultion bioassay and ligand fishing (please refer Chapter 6) was used for the characterization of Ginkgo biloba extract. Both the techniques acted complimentary and resulted in reduced false positive identifications. HRMS-NMR platform rendered the identification of all the AGH inhibitors as bioflavonoids [16]. 5.3.2 PTP1B ASSAY Insulin-signaling pathway plays a key role in the cell glucose regulation. Ligand binding with insulin receptor causes autophosphorylation of the same, which in turn triggers the signaling pathway. As a result, type 4 glucose transporters are upregulated and leads to the increase in glucose uptake from the blood. PTP1B is an enzyme, which could dephosphory­ late the insulin receptor and can, thus block the signaling initiation. Thus, PTP1B holds a position of negative regulator in the insulin-signaling pathway. They also function as the negative regulator in the signaling of leptin, which is an important modulator of energy homeostasis and body weight. Altogether, PTP1B outfits the role of “regulator” in many

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influential conditions such as diabetes, obesity, neuroinflammation, Alzheimer’s disease (AD), etc., also, the PTP1B knockout studies demon­ strated an improved insulin sensitivity and reduced diet induced obesity, seconding the aforementioned effects. In a study, three species of Eremophila were checked for their antidia­ betic components with the help of micrOToF-Q II. The work used highresolution AGH and high-resolution PTP1B inhibition profiling followed by HPLC-HRMS-SPE-NMR for the screening of Eremophila gibbosa, E. glabra, and E. aff. drummondii and identified a total of 21 compounds, including 12 tanes [17]. The same hyphenated analysis series, including Human recombinant PTP1B enzyme was employed by Tahtah et al. and successfully pinpointed the diterpene named 5-hydroxyviscida-3,14-dien­ 20-oic acid as responsible for the antidiabetic features of Eremophila lucida [18]. Zhao et al. searched for the antidiabetic properties of the stem and root of Polygonum cuspidatum Siebold and Zucc. By following a dual high-resolution AGH and PTP1B inhibition bioactivity profiling in combination with HPLC-HRMS-NMR. The analysis setup of two stage bioactivity profiling enabled the isolation of pharmacologically active compounds easier. They have identified the structural features of 16 compounds responsible for the antidiabetic activity of the crude extract of P. cuspidatum by using micrOToF-Q II mass spectrometer as a part of the analysis setup [19]. In a similar way, number of compounds from Eremophila bignoniiflora were identified as potential PTP1B inhibitors by employing bioassay profiling and pharmacological evaluation. Here, a simple combination of LC-HRMS and NMR could identify these active compounds like flavonoids and furanone sesquiterpenes [20]. 5.3.3 5’ADENOSINE MONOPHOSPHATE-ACTIVATED PROTEIN KINASE (AMPK) INHIBITION ASSAY AMPK is related to the regulation of carbohydrate and glucose metabo­ lism, since its activation triggers ATP production. Hence, AMPK inhibition is used as a fishing property for antidiabetic constituents. A commercial extract of Lippia citriodora was characterized for its phenolic profile. The extract was fractionated and subjected to AMPK modulation study utilizing 3T3-L1 adipocyte model. 29 active compounds including iridoids, phenylpropanoids, and flavonoids were identified from 11 fractions by RP-HPLC-ESI-ToF-MS [21].

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5.3.4 ALPHA AMYLASE (α-AMYLASE) The enzyme α-amylase plays a role in the cleavage of insoluble large carbohydrate molecules into smaller, soluble carbohydrates and inside the body, they serve significant strategies for blood glucose level management. Antidiabetic activity of cinnamon (Cinnamomum verum Presl.) was studied by applying α-amylase inhibition assay together with HPLC-HRMS-SPE-NMR. Both the chemical and biological profiling of cinnamon was conducted, proving that cinnamaldehyde is the major α-amylase inhibitor along with four other minor compounds [22]. A quadrupole high-resolution AGH, PTP1B, α-amylase, radical scavenging profiling followed by activity guided analysis with HPLC-HRMS-SPE­ NMR was carried out for Morus alba L. root bark extract. A number of Diels-Alder adducts, including a new one named Moracenin E along with other isoprenylated flavonoids and 2-arylbenzofurans were identified as the bioactive components and they were found to have high radical scavenging activity also [23]. 5.3.5 ACETYLCHOLINESTERASE (ACHE) Different types of Dementia, especially AD, are becoming a major health challenge as it affects the quality of life experienced, both personally and socially. AD is characterized by a number of abnormalities connected to memory, behavior, thinking, language, and many other related functions, assumed to occur due to a deficit of cholinergic functions in the brain. Acetylcholine is a neurotransmitter, which is an active part of cholinergic synapses and deals with the cognitive functions. Acetylcholinesterase (AChE) hydrolyzes acetylcholine and thus creates a hurdle for the activity thereof. Therefore, one of the most important approaches in the therapy of AD is regulating the acetylcholine levels by administering acetylcho­ linesterase inhibitors (AChEIs) and AChEIs are considered as the widely accepted remedy for AD. Natural AChEI sources are of great importance in this scenario. A mass study in this area was conducted in Iran, in which, AChE inhibitory effects were evaluated for 25 Iranian plants. A combina­ tion of AChE inhibition assay NMR-HRMS-Molecular networks-molec­ ular docking have suggested the n-hexane extract of Prangosferulacea as the most effective AChE inhibitor, owing to the presence of many active constituents, including flavonoids and furanocoumarins [24].

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5.3.6 ANDROGEN BIOASSAY Androgens are hormones; participate in many body functions such as metabolism, insulin sensitivity, bone, and cardiovascular health, etc., and most importantly, in sexual health and reproductive system [25]. A notable study was the development of an identification procedure to separate and identify unknown androgen, pro, androgen, and androgen derivatives in herbal preparations and sports supplements. By including three different pretreatment steps, it was made possible to activate the inactive compounds also. A yeast androgen bioassay-guided fractionation, followed by a simple combination of UHPLC/ToFMS and an accurate mass database (MetAlign) was successfully employed for compound identification [26]. 5.3.7 LIPOXYGENASE (LOX) INHIBITION ASSAY The enzyme lipoxygenase (LOX) catalyzes the arachidonic acid metabo­ lism by specifically inserting molecular oxygen in the molecule to form 5-hydroxyeicosatetraenoic acid, which in turn dehydrated to an unstable intermediate leukotriene (LT) A4, which is metabolized to cysteinyl leukotrienes (CysLTs) by LTC4 synthase. Thus, the LOX inhibitors furnish the therapeutic tool for many chronic inflammatory diseases and Melicope ptelefolia Champ ex Benth was investigated for the same. By using inhibi­ tion towards soybean 5-LOX activity as a tool, the fractionation was carried out and subjected to test inhibitory effects against formation of cysLTs and human PBML 5-LOX. 2,4,6-trihydroxy-3-geranylacetophenone (tHGA) was found to be the active compound and a dual mechanism of action proposed [27]. 5.4 ANTIOXIDANT ASSAYS Antioxidant assays do not impart any direct biological processes, but are considered to generate biologically relevant results and hence assays corresponding to antioxidant and free radical scavenging is classified under bioassays [28]. An antioxidant bioassay was conducted for the aqueous ethanol extract of roots of Solanum melongena, in terms of nitric oxide (NO) produc­ tion induced by lipopolysaccharides in e RAW 264.7 cell line. Three new lignanamides, along with 14 known analogs were found to be the NO

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inhibitory compounds in the extract. A combination of semi-preparative HPLC-TLC-NMR-HRMS was utilized for the structure elucidation of the identified compounds. The cell viability study by MTT assay, conducted prior to the bioassay confirmed the absence of cytotoxicity of the isolates, supporting their inhibitory activity against NO production [29]. Arto­ carpus heterophyllus L. commonly known as jackfruit is renowned for its tasty edible pulp of ripe fruits, medicinal value of raw fruits and for having the world record of biggest fruit. This fruit produces a big quantity of fruit waste, and this fruit waste was studied for its antioxidant potential. J33 variety was considered for the study and its ethyl acetate fraction was subjected to the bioassay fractionation by using DPPH assay. Chemical constituents were identified by ToF-LCMS with the help of data analyzermass hunter and an online database. Fifteen active constituents were found to contribute to the antioxidant activity of the extract out of which, 11 compounds were identifying from the particular species for the first time [30]. Dash et al. conducted a complete study on the strong antioxidant­ Pentylcurcumene-from Geophila repens (L.) I. M. Johnst (Rubiaceae). Along with the HPTLC fingerprinting, cellular antioxidant protocols such as DPPH assay, oxygen radical absorbance capacity (ORAC) assay and cell-based antioxidant protection in erythrocytes (CAP-e) assay were performed to ensure the antioxidant activities [31]. Salvia miltiorrhiza Bunge root (Danshen) is a popular traditional medicine for its beneficiary properties against bone loss, cancer, renal deficiency, Alzheimer’s, Parkinson’s, cerebrovascular, coronary heart diseases, hepatocirrhosis, and skin problems. Ethyl acetate extract of the herb was subjected to an antioxidant response element (ARE)-driven luciferase reporter system. The strategy was to remove the major active compounds by high-resolution peak fraction approach and to enhance the prospective discovery of active components in trace amounts by bioassayHRMS parallel coupling. Among a total of 62 minor compounds, 33 were found to be nuclear factor erythroid 2-related factor 2 (Nrf2) activating molecules and thus are important in treatment of oxidative stress and related diseases [32]. 5.5 ANTI-MICROBIAL ACTIVITY Microbial contamination is one major reason behind the triggering and propagation of many of the diseases and hence the antimicrobial

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compounds, especially natural compounds find their importance as thera­ peutic substances. We are discussing about antibacterial, antifungal, and anthelmintic compounds. A study illustrated a rapid and efficient analysis method using highresolution anti-bacterial profiling followed by HPLC-HRMS-SPE-NMR for the screening of 180 extracts from 88 traditional Chinese plant species, which have been used as folk medicine for snakebite. The antibacterial potential of the plants was investigated as the necrotic wound, caused by snakebite can secondarily be affected by a bacterial infection from the snakemouth itself. The hybrid of instruments allowed a fast pinpointing from a complex matrix and the bio-chromatograms revealed that tannins are the major bacterial growth inhibitors in the studied plants, along with three non-tannin active compounds [33]. The presence and activities of tannins against snakebite necrosis have proved by a high-resolution hyaluronidase inhibition profiling accompanied with HPLC-HRMSSPE-NMR analysis. Eighty-eight plant species, traditionally used to cure snakebite in China, were investigated for their hyaluronidase, phospho­ lipase A2 and protease inhibitor activities against four different venoms. Among them, 22 plant extracts, due to their high content of tannins, found to have a good activity against at least one venom. In addition, the study allowed structural identification of four active non-tannin components [34]. Aliivibrio fischeri bacteria suspension-bioassay was employed well as another important tool for the characterization of active compounds from the berry extracts of bilberry, blueberry, chokeberry, açai berry, and cranberry. HPTLC-Vis MS served even as a quantitative aid and the study put forward a rapid and simple quality assessment procedure, including a DPPH assay, direct antibacterial bioassay, and HRMS [35]. Tanacetum vulgare L. (tansy) root extract was subjected to separation by overpres­ sured layer chromatography (OPLC)-DART-HRMS, which accomplished a rapid and efficient separating tool. Bioassays using A. fischeri and B. subtilis along with the OPLC-DART-HRMS hyphenation could isolate six active compounds, including four polyacetylene compounds [36]. Due to the anthelmintic resistance, the parasites may survive the drug doses and often leads to the failure of anthelmintic drugs. It raises a requisite of newer drugs and doses. Warburgia ugandensis, a Sprague subspecies ugandensis leaves were studied for their anthelmintic proper­ ties, using N2 wild-type C. elegans strain, followed by cytotoxicity assay using HEK 293 and RAW 264.7 cell lines. Three active components were

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identified and characterized as warburganal, polygodial, and ALA. Apart from being an active component, individually warburganal and polygo­ dial are synergistic with ALA. According to anthelmintic activity and cytotoxicity, polygodial was the most potent compound and was selected for further investigations. Interestingly, polygodial found to block the C. elegans motility by a specific mechanism than other compared, estab­ lished anthelmintic drugs, as the C. elegans mutant strains could not show resistance against polygodial. Besides, polygodial exhibits considerable inhibition towards mitochondrial ATP synthesis of C. elegans with respect to the dose. But, as it is shown in a SAR, the efficiency of polygodial rely on the α,β-unsaturated 1,4-dialdehyde structural motif [37]. Natural fungicides are comparatively new vision in product categoriza­ tion. Plants are known to possess antifungal chemical moieties in them, and the efforts for isolating the potent antifungal agents are seeking attention of the time. Highly specified fungicides are developed by identifying and enhancing the plasma membrane (PM) H+-ATPase inhibitors. A research on Candida albicans along with Saccharomyces cerevisiae targeted the PM H+-ATPase enzyme from the fungi as the center of action for antifungal activity of the plant bio-actives. Around 46 crude extracts from 33 different plant species have screened by HPLC-HRMS-SPE-NMR analysis setup and the potent PM H+-ATPase inhibitors-chebulagic acid and tellimagrandin II were isolated and characterized from Haplocoelum foliolosum [38]. A high-resolution fungal (PM) H+-ATPase inhibition screening followed by HPLC-HRMS-SPE-NMR was used by Kongstad and coworkers for the identification of antifungal compounds from Uvaria chamae P. Beauv. A number of o-hydroxybenzylated flavanones and chal­ cones were identified in the study [39]. Leishmaniasis is a disease caused by parasites of almost 20 species of Leishmania and is considered as a neglected tropical disease, though it causes even death. Its treatment is very rare and expensive. A research for natural remedy for this health issue pave the way for a semi-high-resolution antileishmanial inhibition profiling combined with HPLC-HRMS-SPENMR for the isolation and characterization of antileishmanial compounds from leaves of Lawsonia inermis L. (henna) [40]. Five components were found to have inhibitory effect on Leishmania tropica, with two of them named luteolin and lalioside being excellent inhibitors. The applications of bioassay-HRMS combination have an extended space in separating out the toxic compounds from the extracts. One major

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finding among the same was the nephrotoxic constituents recognized from the complex mixture of compounds extracted from Easter lilies (Lilium longiflorum). Feline epithelial kidney cell line CCl-94 was used against a series of three cytotoxicity assays-LDH leakage, Alamar blue reduc­ tion, and Neutral red uptake. The separated compounds were subjected to multiple fragmentation ion trap (IT) and HRMS profiling by using Accu­ rate Mass Q/ToF mass spectrometer (MS) and identified to be steroidal glycoalkaloids (SGA) of solasodine nature. Different SGA analogs in the plant were identified as the major cytotoxic components of the Easter lily flowers extracts [41]. 5.6 LARVAL BIOASSAYS The essential oil from aerial part of Adenosma Buchneroides was inves­ tigated for the compounds responsible for its mosquito repellent activity. The in-cage mosquito repellent bioassay guided isolation of active compounds was further extrapolated to the identification by GC-MS and GC-FID, along with the structural elucidation by IR, HR-ESI-MS, and NMR. Again, the larval bioassays and MTS assays were employed to evaluate the larvicidal activity and cytotoxicity of these compounds. Thus the study furnishes the intelligent utilization of two related bioassays for two different intentions/ applications [42]. 5.7 ANTICANCER ASSAYS High potent and specific anticancer drugs are of great consideration, as the nonspecific anticancer drugs cannot distinguish between the normal cells and affected cell, and causes apoptotic cell death for both as well, which leads to many side effects and loss of immunity. Caspase-3-a cysteine protease which is specifically activated by apoptotic inducers, and then specifically inactivates a number of cellular proteins, causing cell death-is used in many high throughput-screening processes. Bioassay profiling of Gamboge, the resin of Garcinia hanburyi, including HeLa-C3 against caspase-3 could identify two potential fractions from the extract. Compound identification and characterization using HPLC/ESI Q-ToF MS ended up in gambogenic acid, epimeric isogambogic acids, and epimeric mixtures of gambogic acids (68.7%) and gambogoic acids (26.9%) [43]. Compounds

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from the leaves of Macaranga barteri were assessed for their cytotoxicity against human adenocarcinoma cell lines such as breast (MCF7), cervix (HeLa), lung (A549) and prostate (PC3), post cell viability studies. A total of 9 new compounds, 6 stilbenes, and 3 flavonols were isolated, out of which, stilbenes exhibited potent cytotoxicity, whereas flavonols showed a lesser potential. The measured selectivity index against human prostate cells proved the compounds’ specific cytotoxicity towards the cancer cells [44]. Many of the phytochemical compounds act more effectively while in a combined form. This synergic effect is lost during partition and the individual compounds may less effective than complex crudes. The cyto­ toxicity effect of Raphanus sativus var. caudatus Alef onv against HCT116 cells was found to be attributed to many compounds including glucosino­ lates (GSL), isothiocyanates, indoles, flavonoids, alkaloids, thiocyanates, oxazolidine, and dialkyl disulfide and this slice of information allows the authentication and quality control (QC) of the product in laboratory scale, leaving the door of bulk quality assurance opened. UHPLC/ESI-QToFMS/MS could deliver more detailed data than a similar previous study using GC-MS [45, 46]. 5.8 COMBINATION BIOASSAYS Combinations bioassays provide complementary therapeutic effects and promote the investigation of synergic activity of the bioactive compounds contribute towards effective therapeutic activities. Therefore, the compounds separated by combination bioassays will be more potent. It has been previously observed that geranylated flavonoids contribute to the bioactivity of Paulownia tomentosa (Thunb.) Siebold and Zucc. ex Steud in terms of antimicrobial, cytotoxic, and antioxidant effects. The potential inhibition raised by the fruit extract against AGH and PTP1B enzymes were used for the activity-based purification of compounds. Those compounds which have been proved as potent were subjected to structure elucidation and enzyme kinetics study [47]. In a study published in 2014, the crude methanol extract of a peren­ nial leguminous vine Pueraria lobate-one among the 50 fundamental herbs in Traditional Chinese Medicine (TCM)-was screened by a prom­ ising combination of dual high-resolution AGH inhibition and radical

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scavenging profiling hyphenated with HPLC-HRMS-SPE-NMR. The study successfully presented a bioactivity profiling of the extract, where 21 compounds were of proven activity and three were new compounds, which were subjected to structure elucidation. The entire compound was proved to be potent AGH inhibitors and antioxidants [48]. A combination of three different high-resolution biological activity assays such as radical scavenging, α-glucosidase inhibition and aldose reductase inhibition assay was applied for the evaluation of Radix Scutel­ lariae, the dried root of Scutellaria baicalensis. The triple high-resolution bioassay, in fusion with HPLC-micrOToF-Q II MS-SPE-NMR experi­ ments in the crude extract allowed the identification of two major aldose reductase inhibitors, one α-glucosidase inhibitor and eight main radical scavengers [49]. Another effectively used triple combination was “high­ resolution radical scavenging/α-glucosidase/α-amylase profiling” for the identification of bioactive compounds from Dendrobium officinale, followed by the HPLC-PDA-HRMS-SPE-NMR profiling where 6 AGH inhibitors, 1 alpha amylase inhibitor, and 12 radical scavengers were identified from the extract [42]. The pancreatic cholesterol esterase enzyme is an important enzyme which could upregulate the serum cholesterol levels. Angiotensin converting enzyme (ACE) takes part in the modulation of body fluid volume and thereby involved in the regulation of blood pressure levels. So, the inhibitory assays towards these enzymes were used for the inves­ tigation of hypocholesterolemic and antihypertensive compounds from pomegranate peel. The direct extract and its protein isolate were digested using two different enzymes followed by the bioassay evaluation of these hydrolysates. The obtained results were compared with that of the original extract and protein isolate. The peptides and polyphenols responsible for the bioactivity were identified by RP-HPLC-ESI-Q-ToF [50]. Multipotent compounds were isolated in situ from the leaves of Helianthus annuus L. by different bioassays in/on the HPTLC adsorbent bed. Two diterpenes-(-)-kaur-16-en-19-oic acid and 15-α-angeloyloxyent-kaur-16-en-19-oic acid, showing potent antioxidant, antibacterial, and cholinesterase inhibiting activities were isolated and characterized by a hyphenation of NMR-HRMS-DART-MS/MS [51]. Another combination of platelet aggregation and antithrombus assays together evaluated the antithrombotic properties of hawthorn leaves after fractionation. Twentyfive active compounds were identified from the active fraction by using

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HPLC-QToF-MS technique, suggesting the presence of potent platelet aggregation inhibitors comprising monoterpenoids, diterpenoids, and flavones. These findings were supported by molecular modeling [52]. Turkish folk medicine for hemorrhoids was studied for the scientific evaluation of the therapeutic practice. Verbascum lasianthum Boiss. ex Bentham flowers, on activity-guided fractionation, identified to contain eight active compounds inserting antinociceptive and anti-inflammatory activities. The results were seconded by in vivo and toxicity studies [53]. Cold-pressed seed oils of flax, canola, and hemp are commercialized as premium products for their claimed health advantages. Compounds behind these properties were studied with the help of HPTLC, coupled with DPPH scavenging assay, AChE inhibition assay, pYES bioassay and antimicrobial A. fischeri bioassay and B. subtilis bioassays. The bioactive compounds separated by the target guides were analyzed by HPTLC-ESI­ MS and some initial assumptions could have made [54]. 5.9 BIOASSAYS FOR QUALITY CONTROL (QC) Sometimes bioassays are placed in analyzes not only for preparation purposes, but as a necessary confirmation tool also. Many factors such as geographic origin, environmental, and growth conditions, agricultural practices and manufacturing processes contribute to the heterogeneous nature of natural formulations, which make the quality assurance of the herbal products a challenge, in terms of safety and efficacy. While using as a QC aid, the bioassay part evaluates and ensures the effectiveness, potency, and activity of the analyte. Quality bioassays can use any biomarker such as metabolites, enzymes, genes, or protein expression profiling, which can ascertain specificity and sensitivity of the testing analyte. Safflower injection (Honghua injection), prepared from Carthamus tinctorius L. is a widely used TCM for many diseases, but is “black­ marked” many times for its quality fluctuations. Keeping this in mind, a combination of chemical fingerprinting (CF), cell-based biological profile assay, and enzymatic assay was assigned to detect the quality deviations and its responsible components. CF by SYNAPT G2S-masslynx and data processing by UNIFI®scientific information system identified 33 compounds in the samples. The integration of CF and the two bioassays could identify all of the abnormal samples and the system furnishes a potential QC tool for other herbal formulations as well [55].

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An interesting example for employing bioprofiling for the quality assurance is the quantitative method developed for bioprofiling of bioac­ tive components from ginger (Zingiber officinale Roscoe) and ginger containing food products. Multipotent compounds with influence towards Radical scavenging activity, A. fischeri, B. subtilis, pYES (planar yeast estrogen screen), AChE, and tyrosinase inhibition were isolated from the ginger extracts and products. Along with the quantification of bioactive compounds-[6]-gingerol and [6]-shogaol, the procedure allows the iden­ tification of other multivalent bioactive components and measurement of bioactivity pattern and thereby ensures the product quality. In the HPTLC­ HRMS hyphenation, the zones of interest were directly eluted into the HRMS, permitting the analysis of products containing even trace amounts of active components, enabling the characterization of all the potent compounds [56]. Another multiple biomarker assay was developed and checked the activity and quality of botanicals in 2017. They have tooled enzyme inhibition powered ‘dual channel microfluidic chip’ as the strategy for quality assessment and therapeutic consistency evaluation. One channel was designed for the enzymatic complex formation, where the other one dealt with the enzymatic reaction. A Chinese medicine-QiShenYiQi Pills (QSYQ), which consists of extracts of four herbs, was dissected by using thrombin and ACE. Eleven compounds were found to be inhibiting thrombin as well as ACE, and they were identified by their mass spectra. Drug quality assessment as well as screening of active compounds was achieved by the platform [57]. 5.10 PITFALLS While dealing with biosystems, many points are to be remembered. The instruments and processes should be necessarily clean and tidy, especially while repeating uses are there. When connected online, it should confirm that the bioassay media is compatible with the analysis system. Similarly, any pre-processing or conditions such as temperature, pH, etc., should not negatively affect the bioassay. The steps of the whole procedure, connected in series, should be adjusted to follow a moderate rate, to finish the sequences accordingly. In addition, many of the bioassays found to be a failure while evaluating the effects in terms of true biological effect

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and toxicity in vitro, being inferior to the results obtained from in vivo experiments. In addition, there are compounds showing their activity non-specifically towards bioassays, which are frequently appearing as false positives even in multiple bioassay screening and are named as panassay interference compounds (PAINS). The masking effect of abundant compounds on active minors is another factor, which can mislead the bioassay results. 5.11 CONCLUSION Biological assays serve as the guiding methods for the characterization of biologically active compounds. All the methods follow a key feature where, a target-ligand interaction takes place in the provided biological system and the compounds which possess activity towards the specific function separate out from the extract, making further analysis easier. They can be organized well based on their execution and application. Keeping the view loyal to the topic, the presented chapter discussed only about bioassays compatible/used with HRMS for phytochemicals analyzes. Inside this dimension itself, there lie many opportunities for their utilization, such as natural product screening, metabolites stud, and preparation of libraries. KEYWORDS • • • • • • •

acetylcholinesterase angiotensin converting enzyme anticancer assays bioassay chemical fingerprinting combination bioassays planar yeast estrogen screen

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with direct bioautography and direct analysis in real time mass spectrometry for tansy root. J. Chromatogr. A., 1603, 355–360. 37. Liu, M., Kipanga, P., Mai, A. H., Dhondt, I., Braeckman, B. P., De Borggraeve, W., & Luyten, W., (2018). Bioassay-guided isolation of three anthelmintic compounds from Warburgiaugandensis Sprague subspecies ugandensis, and the mechanism of action of polygodial. Int. J. Parasitol., 48(11), 833–844. 38. Kongstad, K. T., Wubshet, S. G., Johannesen, A., Kjellerup, L., Winther, A. M. L., Jager, A. K., & Staerk, D., (2014). High-resolution screening combined with HPLC-HRMS-SPE-NMR for identification of fungal plasma membrane H+-ATPase inhibitors from plants. J. Agric. Food Chem., 62, 5595–5602. 39. Kongstad, K. T., Wubshet, S. G., Kjellerup, L., Winther, A. M., & Staerk, D., (2015). Fungal plasma membrane H⁺-ATPase inhibitory activity of o-hydroxy benzylated flavanones and chalcones from Uvaria chamae P. Beauv. Fitoterapia., 105, 102–106. 40. Iqbal, K., Iqbal, J., Staerk, D., & Kongstad, K. T., (2017). Characterization of antileishmanial compounds from Lawsonia inermis L. leaves using semi-high resolution antileishmanial profiling combined with HPLC-HRMS-SPE-NMR.Front Pharmacol., 8, 337. 41. Uhlig, S., Hussain, F., & Wisløff, H., (2014). Bioassay-guided fractionation of extracts from Easter lily (Lilium longiflorum) flowers reveals unprecedented structural variability of steroidal glycoalkaloids. Toxicon., 92, 42–49. 42. Chua, C.,Lib, T., Pedersenb, H. A., Kongstad, K. T., Yana, J., & Staerk, D., (2019). Antidiabetic constituents of dendrobium officinale as determined by high-resolution profiling of radical scavenging and α-glucosidase and α-amylase inhibition combined with HPLC-PDA-HRMS-SPE-NMR analysis. Phytochem. Lett., 31, 47–52. 43. Han, Q. B., Zhou, Y., Feng, C., Xu, G., Huang, S. X., Li, S. L., Qiao, C. F., et al., (2009). Bioassay guided discovery of apoptosis inducers from gamboge by highspeed counter-current chromatography and high-pressure liquid chromatography/ electrospray ionization quadrupole time-of-flight mass spectrometry. J. Chromatogr. B, 877(4), 401–407. 44. Segun, P. A., Ogbole, O. O., Ismail, F. M., Nahar, L., Evans, A. R., Ajaiyeoba, E. O., & Sarker, S. D., (2019). Bioassay-guided isolation and structure elucidation of cytotoxic stilbenes and flavonols from the leaves of Macaranga barteri. Fitoterapia., 134, 151–157. 45. Sangthong, S., Weerapreeyakul, N., Lehtonen, M., Leppanen, J., & Rautio, J., (2017). High-accuracy mass spectrometry for identification of Sulphur-containing bioactive constituents and flavonoids in extracts of Raphanus sativus var. Caudatus alef (Thai rat-tailed radish). J. Funct. Foods, 31, 237–247. 46. Pocasap, P., Weerapreeyakul, N., & Barusrux, S., (2013). Cancer preventive effect of Thai rat-tailed radish (Raphanus sativus L. var. Caudatus Alef). J. Funct. Foods, 5, 1372–1381. 47. Song, Y. H., Uddin, Z., Jin, Y. M., Li, Z., Curtis-Long, M. J., Kim, K. D., Cho, J. K., & Park, K. H., (2017). Inhibition of protein tyrosine phosphatase (PTP1B) and α-glucosidase by geranylated flavonoids from Paulownia tomentosa. J. Enzyme Inhib. Med. Chem., 32(1), 1195–1202. 48. Liu, B., Kongstad, K. T., Qinglei, S., Nyberg, N. T., Jager, A. K., & Staerk, D., (2015). Dual High-resolution α-glucosidase and radical scavenging profiling combined with

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HPLC-HRMS-SPE-NMR for identification of minor and major constituents directly from the crude extract of Pueraria lobate. J. Nat. Prod., 78(2), 294–300. 49. Tahtah, Y., Kongstad, K. T., Wubshet, S. G., Nyberg, N. T., Jønsson, L. H., Jäger, A. K. Qinglei, S., & Staerk, D., (2015). Triple aldose reductase/α-glucosidase/ radical scavenging high-resolution profiling combined with high-performance liquid chromatography-high-resolution mass spectrometry-solid-phase extraction-nuclear magnetic resonance spectroscopy for identification of antidiabetic constituents in crude extract of radix scutellariae.J. Chromatogr. A, 1408, 125–132. 50. Hernández-Corroto, E., Marina, M. L., & García, M. C., (2019). Extraction and identification by high-resolution mass spectrometry of bioactive substances in different extracts obtained from pomegranate peel. J. Chromatogr. A, 1594, 82–92. 51. Móricz, Á. M., Ott, P. G., Yüce, I., Darcsi, A., Béni, S., & Morlock, G. E., (2018). Effect-directed analysis via hyphenated high-performance thin-layer chromatography for bioanalytical profiling of sunflower leaves. J. Chromatogr. A, 1533, 213–220. 52. Gao, P., Li, S., Liu, K., Sun, C., Song, S., & Li, L., (2019). Antiplatelet aggregation and antithrombotic benefits of terpenes and flavones from hawthorn leaf extract isolated using the activity-guided method. Food Funct., 10(2), 859–866. 53. Kupeli, E., Tatli, I. I., Akdemir, Z. S., & Yesilada, E., (2007). Bioassay-guided isolation of anti-inflammatory and antinociceptive glycoterpenoids from the flowers of Verbascumlasianthum Boiss. ex Bentham. J. Ethnopharmacol., 110(3), 444–450. 54. The, S. S., & Morlock, G. E., (2015). Analysis of bioactive components of oilseed cakes by high-performance thin-layer chromatography-(bio) assay combined with mass spectrometry. Chromatography, 2(1), 125–140. 55. Feng, W. W., Zhang, Y., Tang, J. F., Zhang, C. E., Dong, Q., Li, R. Y., Xiao, X. H., et al., (2018). Combination of chemical fingerprinting with bioassay, a preferable approach for quality control of safflower injection. Analytica Chimica Acta, 1003, 56–63. 56. Krüger, S., Bergin, A., & Morlock, G. E., (2018). Effect-directed analysis of ginger (Zingiber officinale) and its food products, and quantification of bioactive compounds via high-performance thin-layer chromatography and mass spectrometry. Food Chem., 243, 258–268. 57. Li, Z. H., Ai, N., Yu, L. X., Qian, Z. Z., & Cheng, Y. Y., (2017). A multiple biomarker assay for quality assessment of botanical drugs using a versatile microfluidic chip. Sci. Rep., 7, 12243.

CHAPTER 6

Bioanalytical Screening/Purification Techniques SHINTU JUDE and SREERAJ GOPI

Research and Development (R&D) Center, Plant Lipids (P) Ltd., Kadayiruppu, Kolenchery, Cochin, Ernakulam, Kerala – 682311, India ABSTRACT There are newer technologies that happen to arise even within days, regard­ less of the fields, application, related instruments, etc. While considering the phytochemicals, owing to the nature of the matrix, all the related processing steps such as the extraction, isolation, and analysis seem to be tedious and time-consuming. Hence, many screening techniques are developed for the feasible isolation of bioactive compounds. Herein the chapter, the leading technologies in bioanalytical screening methodolo­ gies including TLC bioautography, ultrafiltration, ligand fishing, HPLC based post-column bioassays, high performance displacement chromatog­ raphy, affinity chromatography, cell membrane chromatography (CMC), size exclusion chromatography (SEC), etc., are discussed with relevant examples. 6.1 INTRODUCTION The bioactivity-guided characterization and isolation often fail in the case of less abundant bioactive compounds. If the number of active compounds present in the matrix, the relative concentration differences also play a villain role in the bioactive characterization. Plant secondary metabolites constitute most of the bioactive components of nature. They represent ligands of biological targets, because of their structural and functional peculiarities. Taking advantage of this property, screening techniques

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based on functional responses, secondary activities or interactions between some targets are used in methodologies for the active compounds isolation and screening. Thus, the next stage of developments in the field of active components identification introduced some analytical techniques. In this chapter, we discuss about some leading analytical-screening techniques, which can be coupled with HRMS. A presentation of all the techniques is given in Table 6.1. TABLE 6.1 The Leading Technologies for Bio-Analytical Screening Technique TLC bioautograghy

Working Principles Separation based on localizing the activity of complex matrix Ultrafiltration Membrane-based separation technique Ligand fishing Receptor-ligand affinity adsorption HPLC based post-column assays HPLC separation followed by a protein-ligand interference Affinity chromatography Ligand affinity separation Cell membrane chromatography Affinity separation utilizing cell membrane with specific receptors Size exclusion Chromatography Separation of Ligand bounded large compounds from the unbound small molecules

References [1–14] [15–26] [27–33] [35–56] [60–63] [65–85] [86, 87]

6.2 TLC BIOAUTOGRAGHY Bioautography correlates chromatographic separation with bioactivity screening. TLC/ HPTLC serves as the chromatographic segment in many bioautography analyzes due to its rapid localization efficacy on the active compounds from complex matrices, and is hence considered here as the prime approach. A biological target prepared in a suitable medium is applied on a developed TLC plate, and placed for incubation. The separated zones proceeded for further analyzes. Earlier studies dealt only with antifungal compounds. Now, a number of biological targets such as enzymes, bacteria, yeasts, oxidation processes, etc., can be applicable to TLC bioautography. By using bioautography, the effective isolation of compounds from a complex matrix and an improved identification of their activity can be achieved. Therefore, bioautography is preferred for the investigation of natural products.

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Depending on the working, bioautography can be classified into three, Contact bioautography, which allows a direct contact of bioactive compounds from the TLC plate by transferring to the inoculated medium. As a result, growth inhibition zones appear in the contact places, corre­ sponding to the active compounds, second one is immersion method, in which the developed TLC plate is immersed (or covered with) in the medium. Medium remains on the surface throughout the incubation time and visualization. The third method is named as direct bioautography. Here, both the separation and bio screening are conducted on the chroma­ tography plate directly. The microbes are grown directly on the developed TLC plate. In the case of antioxidant assays, though they are considered as bioassays, the actual procedure does not bear any biological processes, methods or aids, but only chemicals. Here, in one mode, the assay medium is kept in contact with the separated test compounds on TLC plate, is by spraying the same onto the plate. The working of TLC bio-autography is presented in Figure 6.1. The active compounds are isolated thoroughly based on their bioactivity and the applied profiling procedure, irrespective of their nature, functional groups, or abundance. For example, alkaloids from five different Amaryl­ lidaceae species were studied for their AChE inhibitory activities by using PLE (pressurized liquid extraction)/SPE/HPLC/ESI-octopole-oaToFMS hyphenation. Around 17 individual alkaloids were structurally identified from the complex mixture, including the newly determined dihydrogalan­ thamine [1]. In another study, meroterpenes were identified as the nitric oxide (NO) production inhibiting molecules from Psoralea corylifolia fruits, one of the well-utilized plants in traditional Chinese medicine (TCM). Isolated compounds-one new and two established-were structure elucidated with NMR-HRMS-X ray crystallography techniques, and their activity was further confirmed with Nitrite assay on LPS-induced NO production in RAW 264.7 cells [2]. Antibacterial compounds separated from Eugenia jambolana, were alkaloids, flavonoids, saponins, anthraqui­ nones, glycosides, terpenoids, steroids, and phenolic compounds [3]. One earlier attempt to visualize the interaction of lipase with the inhibitory components in the lotus (Nelumbo nucifera Gaertn.) leaves have success­ fully recorded six alkaloids as the active components from their MSn (n = 4) data by coupling TLC bioautography with electrostatic field induced spray ionization [4].

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Extraction

FIGURE 6.1

TLC development

After incubation

Bioautogram

Schematic representation of TLC bioautography.

Antimicrobial investigation is a very interesting domain handled with TLC bioautography. TLC bioautography was utilized for the screening of compounds having antifungal activity against Candida albicans from the stem bark extract of Croton heliotropiifolius Kunth. The study made use of HPLC-ToF-HRMS for the identification and structure elucidation of the nine isolated compounds [5]. In the same way, bioactive compounds of Tanacetum vulgare L. were investigated with HPTLCUV/Vis/FLD-EDA­ HRMS. The bioautography was accomplished by four antibacterial cultures and the compounds in the bioactive zones were identified as polyacety­ lenes, with an orbitrap MS [6]. Along with the usual TLC-bioassay-HRMS pattern, Jamshidi-Aidji et al. used inverse densitometric measurement for the quantification of the inhibition zones. In addition, they have given a statistical demonstration for the effect of different media on the results [7]. TLC, in hyphenation with more than one bioactivity profiling enables the recognition of multipotent compounds. By using a combination of TLC-DPPH-Hydroxyl radical scavenging assay-Erythrocyte membrane stabilization assay, an antioxidant component having erythrocyte membrane stabilizing potential was identified from Carissa carandas (L.) leaves extract. The following TLC-HPLC-UV-FTIR-GC-HRMS setup was used for the characterization of the separated active compound as 20-hydroxypregnan 18-oic acid [8]. Both antifungal and antibacterial activity were shown by Combretum molle leaves, as proved by TLC followed by inoculation with a spray of active suspension of microbial cells and the strong inhibition zones were found to be corresponding to the active compounds [9]. In the same way, the active compounds were screened by the HPTLC-antibacterial, acetylcholinesterase (AChE) screening-HRMS profiling from Salvia miltiorrhiza Bunge root [10]. A potential antioxidant, with strong cholinesterase inhibitor properties was isolated from Geophila repens (L.) I. M. Johnst (Rubiaceae), by using a combination of bioassays and TLC bioautography [11].

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HPTLC was implemented as a quantitative aid and as a bioanalytical screening tool. These two dimensions were demonstrated together in the discovery of bioactives from Geophila repens. An antioxidant, effective for different oxidants as well as oxidative damage of the cells was isolated and was recognized as Pentylcurcumene, by applying NMR and HRMS. The quantification attempts of the study resulted in a sensitive and precise quantification of compound accurate in nanogram levels. The active compound was further demonstrated to possess inhibitory activity against AChE and BChE. Mode of inhibition together with molecular docking details and enzyme kinetics data suggest the application of Pentylcurc­ umene even in high-end therapeutics, such as AD treatment [12]. The possibility of TLC bioautography to handle different samples simultaneously, makes the analyzes and comparisons of phytochemicals rapidly and hence the bioactive compounds against the requirement can be selected easily. From a group of ten different Mediterranean plants studied against seven different bacteria strains, Diplotaxis harra exhibited the best antibacterial activity. The separation, identification, and structural characterization were carried out and the invention of active compound Sulforaphane, holding a strong history of therapeutic benefits in its name, was seconded by the confirmed antibacterial activities [13]. Many shortcomings are reported for TLC bioautography so far. As the process involves two steps, the number of influencing factors is also high. The chromatographic elements such as solvents, buffers, sample preparation agents, etc., can affect the second step involving microbial processes. pH and temperature of the fluids from chromatographic steps may also interfere with the microbes, especially, the acidic conditions have a destroying effect on the bioassay response [14]. In addition, the range of enzymes and other microbial are restricted as the amount needed for detection is high in many cases and it is not practical for all the microbes to obtain in that much higher amounts. Besides, thorough knowledge on the microbes and procedure outputs are needed for the appropriate selection of test microorganism and incubation. Again, if the active compounds exhibit multivalent actions, a single assay may not be enough for the differentiation between the activities; a second or third assay is recommended in these cases. Then, in addition, many of the TLC bioautographies constrain its usage for quantitative analysis. Moreover, many biological assays are not compatible with the usual TLC conditions.

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6.3 ULTRAFILTRATION Ultrafiltration is a membrane-based technology, where the separation depends on the molecular size. It was originally developed for the screening of combinatorial libraries, and was then used for the processing of macro­ molecules and finally for the testing of bioactive compounds. As seen in Figure 6.2, the extract of analyte allows incubating with the target protein, at specific temperature, for a particular time period. Then ultrafiltration is performed by using ultrafiltration membrane having desired molecular weight cut off and washed in order to remove the unbound matrix. The ligand-protein complexes are chemically treated to dissociate the bond-in­ between. It is used for the structural investigation of natural products as a preparative tool along with mass instruments. Ultrafiltration can be of two modes-offline and online. In offline ultrafiltration, the filtrates were preceded for further analysis manually. In online procedure, the analysis setup will be coupled to the ultrafiltration chamber automatically and is known as pulsed ultrafiltration [15].

Sample

Target protein

Ultrafiltration

Complex dissociation

FIGURE 6.2 Working of ultrafiltration.

Offline combination of ultrafiltration-LCMS was successfully used for the investigation of quinone reductase-2 inhibitors from Humulus lupulus L. which is important for its antimalarial, antitumor activities. The ligands were identified and structure elucidation was carried out [16]. A different study handled the investigation of α-glucosidase inhibitory compounds from the leaf flavonoid extract of a traditional medicinal plant, Crataegus oxyacantha L. commonly known as Hawthorn by α-glucosidase inhibition assay, followed by the ultrafiltration LC-DAD-MSn. The α-glucosidase ligands separated by ultrafiltration were identified by FTICRMS [17]. HPLC-DAD-MSn worked well with ultrafiltration in the profiling of

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tyrosinase inhibitory compounds from the mulberry leaves extract (Morus alba) [18]. The tyrosinase inhibitors were isolated and characterized from 212 metabolites of Gastrodia elata using an offline combination of ultrafiltration-UV-MS-NMR [19]. Cyclooxigenase-2 inhibitors were another vital herbal compound isolated by using affinity ultrafiltration from Zi-shen pill, a well-known Chinese medicine for benign prostatic hyperplasia. By using HRMS, eight active compounds were identified, and COX-2 inhibi­ tion assay as well as molecular docking studies provided the supporting molecular level confirmation on the functioning of active molecules [20]. Further, a study from Song et al. developed an ultrafiltration-based strategy to remove unspecific binding of ligands by adding another ligand with more affinity and thereby inserting an “enzyme channel blocking.” Here, during the screening of Flos Chrysanthemi for xanthine oxidase (XOD) inhibitors, febuxostat was made bind to the channel, in order to prevent binding of ligands. Therefore, the four identified XOD inhibitors were believed to be much stronger than the blocking compound febuxostat, which was further verified by microplate inhibition assays [21]. Pulsed ultrafiltration is an online; MS-based technology, where a pulse of ligands is injected to a cell containing macromolecular receptors enclosed by ultrafiltration membrane. The binding between ligands and macromolecules alters the elution profile. The ligand-macromolecular complexes, after washing, are disrupted by appropriate simple preparation methods and the ligands to be analyzed are directed to MS. As pulsed ultrafiltration provides more convenience and advantages over conven­ tional ultrafiltration in terms of amount of analyte and reusability of targets, it finds a better place in applications [22]. Investigation of estro­ genic activities of eight different herbal preparations, conducted by using a bioassay guided pulsed ultrafiltration-LC-MS is an excellent example for the application of pulsed ultrafiltration [23]. The selectivity and efficiency of using pulsed ultrafiltration were validated by the selective screening of anti-inflammatory compounds from 18 different matrices enriched with one or two COX-2 inhibitors. Mass spectral data verified the presence of active compounds, and the lack of interference from the sample matrix, irrespective of nature [24]. The presence of selective and non-selective inhibitors of COX-1 and COX-2 was confirmed in eleven botanicals used for the TCM, Huo-Luo-Xiao-Ling Dan. The seventeen identified active compounds were studied for their inhibiting activity towards human COX-1 and COX-2 [25].

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Despite the potential effects and applications of ultrafiltration-both in offline and online modes, it has some limitations. The ease of use is restricted by the fact that; it doesn’t suit transmembrane proteins which may cause non-specific interactions. Unavailability of respective proteins in sufficient amount is another factor which limits the strategies of inves­ tigations. In addition, in most of the cases, the compounds having more activities and high abundance shows more affinity towards the protein binding, and the method overlooks the low affinity, though synergycontributing ligands [26]. 6.4 LIGAND FISHING Ligand fishing is a technique based on receptor-ligand affinity adsorp­ tion, where the receptors are immobilized on a support and this receptors are used for ‘fishing out’ the ligands/active compounds present in the complex matrix, which have an affinity towards the receptor, and the non­ binding molecules will be remained in the matrix. The active compounds co-separated with the receptors can be eluted out for further analysis [27, 28]. Normally, magnetic nanoparticles are used as the solid support and proteins are as the receptors. Even the less abundant metabolites could be identified by this technique, if they possess affinity towards the ligand protein. Figure 6.3 can narrate it more clearly.

Natural extract

Immobilized receptors

Analysis Fished out active compounds

FIGURE 6.3

Ligand fishing.

In the primary stage of development of “ligand fishing” processes, many of the studies were conducted on alpha glucosidase (AGH) inhibi­ tory compounds. In such a study, N-terminus-coupled AGH magnetic nanoparticle beads (AGN-TCMB) were prepared and their ligand fishing

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properties were identified by Wubshet et al. They have successfully char­ acterized the crude extract of Eugenia catharinae O. Berg. as a constitu­ tion of AGH inhibitory ligands, alkyl resorcinol glycosides and flavonoids by magnetic ligand fishing-HPLC-HRMS-SPE-NMR hyphenation [29]. Deng et al. introduced a modified version of this layout, in which the “control support” without AGH was also included for the screening, along with the AGH immobilized on CNBr activated sepharose beads, so that the false positives could be eliminated by comparing both. The effectiveness of the method was demonstrated by fishing out three AGH inhibitors from the crude extract of green tea, which were identified as epigallocatechin gallate (EGCG), gallocatechin gallate (GCG) and epicatechin gallate (ECG), by analyzing with QToF-MS [30]. Ligand fishing-HRMS coupling provided a new face for antidiabetic therapeutic herbals in many studies. Utilization of agonists of peroxi­ some proliferator-activated receptor-γ (PPARγ) was catalyzed by their scope of application as antidiabetic agents, and one of the important study among them tooled fusion protein affinity chromatography. Human PPARγ ligand binding domain in fusion with glutathione S-transferase (GST-hPPARγLBD) was allowed for the selective attachment of GST with glutathione and was then used for the direct selective identification of interacting compounds from Dendranthema indicum flowers. The rapid, low cost, non-denaturing, renewable, high throughput technology, in combination with HPLC-ESI-Q-ToF-MS/MS identified the active compound as Isochlorogenic acid A [31]. Tao et al. demonstrated the scope of multi-target immobilization and its utilization in compound screening. Maltase, lipase, and invertase were selected as the targets on the magnetic beads for screening antidiabetic compounds from the complex Chinese traditional herbal medicine “Tang­ Zhi-Qing.” A detailed characterization including the morphology, ligand screening conditions, compound specificity, kinetics, etc., were verified for the prepared magnetic beads. Further, five active compounds were identified and their activities were validated, including the synergic activities [32]. Ligand fishing was introduced with the advantages of identifying even the compounds of low affinity and the high affinity compounds of less abundance. Thrombin was such a compound, which is known as the principle enzyme of hemostasis and take part in many important functions in the body, including the usage as diagnosis biomarker, blood clotting enhancement, etc. Salvia miltiorrhiza Bunge roots, commonly known as

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DanShen was traditionally used for the treatment of platelet coagulation, thrombosis, etc., and so, its extract was of high interest in characteriza­ tion studies. Thrombin, covalently bonded with magnetic beads were incubated along with DanShen injection and the bound compounds were characterized. Two of the active compounds-protocatechuic aldehyde and salvianolic acid C-were further evaluated with a traditional inhibitory assay. The conclusion of the study suggests the association of inhibitory activities of the compounds with their specific structures [33]. 6.5 HPLC-BASED POST-COLUMN ASSAYS In the basic form, post-column bioassays consist of an HPLC separation followed by interaction of compound of interest with target protein, which then reacts with the reporter ligand. The reaction products are analyzed through UV, fluorescence or MS detectors, and the presence of an inhibitor gives a negative peak, as it prevents the reaction product formation. The process is mentioned as online-bioassay profiling (Figure 6.4(a)). In some cases, the eluate from column is run parallel for dereplication. In one of the first applications of this online bioassay for phytochemical bioactives, AChE inhibitors were identified from a natural matrix by coupling HPLC­ UV-MS with biochemical detection using Ellman’s reagent [34]. Later, the technology was presented by Kchaou et al. with slight modifications for the identification of AChE inhibitors from Zygophyllum album extracts [35]. The further developments in this technology have replaced UV from the series, first with fluorescence readouts, then with MS readouts [36, 37].

FIGURE 6.4

Different types of post-column bioassays (a) online; (b) at-line; (c) offline.

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In post-column assays, determination of antioxidant activity employs different assays such as ROS, DPPH, ABTS, etc., for the detection [38]. A post-column online DPPH assay, together with NMR and QToF HRMS detailed the antioxidants from L. tibetica extract as pinoresinol-β-D-glucoside, isoacteoside A, acteoside, tibeticoside, epipinoresinol, anthelminthicol A and phillygenol [39]. Inhibition of XOD is important in treatment of gout and many other related diseases. A post-column dual activity assay-XO inhibition and antioxidant assaysdistinguished the bioactive compounds from Oroxylum indicum extract, which were identified by UV and mass spectral data [40]. In another study, a complete phytochemical characterization was conducted for Schisandra chinensis s (Turcz.) Baill. using HPLC-ESI-ToF-MS. Out of the characterized compounds, only one liganan-Gomisin D, along with quercetin glycosides and the chlorogenic acid isomers were potent enough to inhibit ABTS+ radicals by TEAC measurements [41]. Again, ABTS assay, coupled parallel with MS was able to identify the antioxidants from Angelica sinensis essential oil [42]. At the same time, antioxidant capacity of pigments from red cabbage, perilla, and elderberry were evaluated by DPPH radical scavenging assay and the compounds behind the activity was pinpointed by NMR and HRMS [43]. The same instrumentation was used to determine the real particles behind the potential of Yangxinshi tablet (YXST) in the treatment of cardiovascular diseases. By aiding HPLC-ESI-Q-ToF-MS, a total of 127 compounds from different category were identified, and were assessed for their antioxidant activity in vivo and in vitro [44]. Nine bioactive compounds, inhibiting the growth of Plasmodium falci­ parum were isolated by microfractination with HPLC from Carica papaya leaf extracts, which have proven to be antiplasmoidal in vivo and in vitro. A complete activity profiling consisting of in vitro cytotoxicity assay and activity against Plasmodium falciparum and Trypanosoma brucei rhodesiense together with in vivo activity against Plasmodium berghei was conducted and the results suggest piperidine alkaloids as the active compounds in vivo, though lacking their activities in vitro. These findings were further affirmed with the structure elucidation and differentiation of the compounds by HRMS and NMR [45]. In another study, identification of three estrogenic compounds from pomegranate (Punica granatum) was fulfilled by online beta-estrogen receptor bioassay coupled to HPLC sepa­ ration [46]. The possibilities of DNA binding were well used in screening

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Trollius chinensis Bunge. The total analysis setup of HPLC-DAD-ESI-IT­ ToF-MS-DNAEB-FLD resulted in the isolation of 16 and identification of six active compounds [47]. The capacity of multi-target bioassays for the target estimation of active compounds in a single chromatographic run was well utilized by Li et al. for the investigation of XOD inhibitory and free radical scavenging components from Oroxylum indicum extract. Interestingly, the method detected seven potent compounds, including a dual active compound [48]. Different assays intended for the investigation same category of compounds may provide data with different manners. In a study of anti­ oxidants, oxygen radical absorbance capacity (ORAC) assay connecting online with HPLC provided sensitive results for radical scavengers, while DPPH assay gave more selective results, even for rapid radical scavengers. Compounds without authentic standards also were identified by HRMS, and confirmed with NMR from Cyclopia genistoides, while Iriflophenone3-C-glucoside, isomangiferin, and mangiferin, being the major active compounds [49]. A better resolution was obtained by slightly modifying the procedure, and named “atline bioassay profiling” (Figure 6.4(b)). The eluate from the column is fractionated and collected in microplates, (not proceeded to reaction coil) to carry out bioassay. This concept was successfully imple­ mented in the simultaneous parallel analysis for the bioactivity profiling by enzyme assay and compound identification by Q-ToF MS data acquisi­ tion of Cistus incanus active extract [50]. Another modification causes the name “offline profiling” which was made to the procedure, where the post column eluate is collected, dried, and reconstituted with suitable solvent, then completed the bioactivity profiling in different microplates (Figure 6.4(c)). Offline profiling allows a coupling with other detection aids such as NMR also. Offline profiling was used for the bioactivity profiling of different extracts of Isatis tinctoria L. against cyclooxygenase (COX)-2 inhibitory activity and identified tryptanthrin (1) as the bioactive component [51]. A simple procedure for the dereplication of plant extracts containing GABA(A) ligands was demonstrated with Xenopus oocytes by using a gradient elution fraction­ ation connected with a two-microelectrode voltage clamp assay [52]. The post-column bioactivity assays have used to assess plant extracts for their antiprotozoal, anti-trypanosomal, antiplasmodial, and antiretroviral activi­ ties and DYRK1A kinase inhibitory activity [38]. By incorporating NMR

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in the instrumentation setup, the full capability of dereplication analysis setup was achieved and the platform was demonstrated by the identification of benzophenanthridine alkaloids in Eschscholzia californica cell culture [53]. By combining semi-preparative HPLC-MS fractionation along with capillary NMR and bioactivity assessment, it was a successful platform for the identification of bioactive components from Rhynchosia viscose [54]. Jonker et al. demonstrated the utilization of GC as a preparative technique and have successfully tooled with the AR-EcoScreen reporter gene bioassay [55]. However, in contradiction, sometimes the lack of factors such as proper selection of reaction patterns, strong activity, sufficient amount of compound for the reaction, etc., causes the active molecules not to appear in the assayed matrix while comparing with the other activity measure­ ments. In addition, in natural extracts, the assayed results may be obtained due to the synergic effects of compounds with weak activities or trace amounts only, not from any single potent molecule. For example, Curcuma wenyujin essential oil didn’t show the presence of any corresponding anti­ oxidants in HPL-ABTS assay, regardless its verified in vitro antioxidant activities [56]. So, in such cases, it is preferred to enrich the samples prior to the assays. 6.6 HIGH PERFORMANCE DISPLACEMENT CHROMATOGRAPHY Displacement chromatography is primarily a preparative purification technique, and has been applied in many studies for the purification of biological/ biochemical entities. Displacement chromatography works on the fact that; only finite number of binding sites will be available on the surface of the stationary phase. Therefore, if one site is occupied by a molecule, then it will be unavailable for the others. Hence, in equilib­ rium, the molecules with high affinity towards the stationary phase will bind more, leaving the lesser affinity particles with mobile phase flow. A suitable displacer displaces the adsorbed sample components from the stationary phase and as result, occupation of binding sites proceeds with the order of affinity. The continuous displacements finally result in consecu­ tive rectangular zones of pure compounds. Application of displacement chromatography as preparative purification method was demonstrated by the studies on Enantia chlorantha Olive. The bioactive alkaloids were

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isolated from the stem bark extract and were identified as palmatine and dl-tetrahydropalmatine by HRMS and NMR [57]. 6.7 AFFINITY CHROMATOGRAPHY (BIO-AFFINITY CHROMATOGRAPHY) Affinity chromatography can be considered as a kind of liquid chroma­ tography, where the stationary phase is an affinity ligand-a biological binding agent-which is immobilized in a column, in order to bind the active components selectively from the sample under specific conditions. After removing the impurities by washing, the ligands were collected by eluting with proper eluent. Better instrumentation setups were introduced for affinity chromatography, depending on the binding agent. In frontal affinity chromatography (FAC), continuous infusion of complex matrix containing the analyte molecule is provided to the stationary phase. The delay in elution till the active molecules come out of the column, after exceeding its binding capacity is compared with that of a reference compound and mentioned as the binding affinity of ligands. Figure 6.5 presents a clear picture on this. (a)

(b) Non active ligand;

Less active ligand;

Active ligand

FIGURE 6.5 (a) A stationary phase in frontal affinity chromatography; and (b) its effect on the separation of a mixture of active, less active and non-active ligands.

The immobilized biomolecule target can be an isolated molecule such as enzyme, protein receptor, etc., transmembrane proteins or even live cells. While using enzymes as the biomolecule target, immobilized enzyme reactors (IMERs) provide a more convenient platform to analyze the bioactivity of the natural extract. Here, a substrate, specific to the target enzyme is inserted along with the extract, such that the substrate is catalyzed by the enzyme and produce specific products. However, the

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bioactive compounds present in the natural product extract bind with the enzyme and thereby prevent the formation of these products. This allows the measurement of inhibitory activity of compounds from a mixture towards specific enzymes (Figure 6.6) [58].

Active compound/ inhibitor Products

FIGURE 6.6

Substrate Enzyme

Immobilized enzyme reactors (IMERs).

The standard properties of affinity chromatography and HRMS perform together in a synergic way, while coupling, as well as target ligand interac­ tion studies. In a study, antibodies were immobilized in the column to act as the stationary phase and were used for the characterization of the phenolic compounds in Phyllantus urinaria extract [59]. Nonetheless, a protein affinity chromatography was used to screen the PPARγ ligands from Dendranthema indicum flowers [60]. By immobilizing β2 adrenergic receptor on silica, four β2-AR-targeting compounds were separated from corydalis rhizomes. A coupling of the high-resolution mass spectrometer (MS) ToF enabled the system to identify the active compounds. Moreover, the interaction pattern, as well as the binding mechanism, was established to demonstrate the scope of utilization [61]. Eighty-seven putative 14-3-3 client proteins from rice (Oryza sativa L.cv.) roots were identified and their functional characterization was carried out with affinity chroma­ tography-HRMS platform. The beauty of the investigation lied on the collected information on the isoform specific functions of 14-3-3 proteins in root including the growth, carbon metabolism, trafficking, self-defense mechanism, energy metabolism, amino acid metabolism, cell structure and development, signaling, binding, and transport [62]. A complete interchange in the application priority and functions between affinity chromatography and HRMS compound identification was observed in a study from Turkey. Here, 10 new “reverse inhibitors of peroxidase (RIPs)” were prepared synthetically and confirmed by NMR and HRMS. These RIP’s were further used for a rapid, cost-effective purification of peroxidase enzymes from radish species with high yield [63].

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Affinity chromatography gives up its points in two factors, one is the possibilities of false-positive results, which could occur from non-specific binding of compounds, and 2nd is the lack of provision for the simultaneous analysis of bounded compounds for their activities. 6.8 CELL MEMBRANE CHROMATOGRAPHY (CMC) Cell membrane chromatography (CMC) is a kind of affinity chromatog­ raphy, where the stationary phase is fabricated with the cell membranes, which contain specific receptors and are immobilized on a silica carrier. As it is possible to construct the cell lines with expressions of specific recep­ tors, the stationary phases can be customized with definite properties such as controllable expressions, uniform stationary phase surface, improved method specificity, and selectivity as well as increased sensitivity for components [64]. Cellular membrane affinity chromatography was named after the columns with immobilized transmembrane proteins. To date, the technology was mostly reported to be used for the characterization of components in TCM herbs. Antiplatelet components screening from ‘Danshen’ using platelet CMC- UHPLC-QToF-MS/MS is an example for this [65]. Corydlis Decumbentis Rhizoma was investigated for its β1 adrenergic receptor (β1-AR) inhibitors by the same analytical configura­ tion, differing only in the mounted cell membrane, here which is β1-AR. The bone diseases counteracting compound-jatrorrhizine was isolated and recognized by the platform [66]. Active compound and their metabolites could have screened even from the in vivo urine samples, post administration of Aconitum carmi­ chaeli roots by a rat cardiac muscle cell CMC-ToF/MS. The identified 24 active alkaloids and 10 metabolites thereof demonstrated the structureaffinity relationship and retention behaviors, along with a possibility of semi quantification of compounds in fractionated samples [67]. The same instrumental layout was used to analyze the very same sample in another study-but the intention was different. Here, the behavior of the active components both on normal and pathological cells was investigated by using doxorubicin (DOX)-induced heart failure as the model. The analytical framework was considered to be two-dimensional (2D), as the fractions retained and recognized in the affinity column, which acts as the first dimension was introduced offline or online to the second dimension,

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mostly consisting of a monolithic column and HRMS [68]. Out of the 16 active compounds, not surprisingly, four components were proved to specifically counteract the heart failure, which was further confirmed by an in vitro pharmacodynamic examination of the most active one of them­ talatizamine [69]. Another comparative 2D CMC have run for the identifica­ tion of anti-hepatoma components from Scutellariae Radix. Simultaneous loadings on hepatic carcinoma HepG2-CMC columns and normal hepatic L02 CMC columns resulted in the distinction of three efficient, selective antitumor components, recognized as oroxylin A, wogonin, and chrysin by QTof. Cell proliferation and toxicity studies were in agreement with the recommendation of their usage as therapeutics [70]. By comprising hepa­ tocarcinoma cell line SMMC-7721 in the same HepG2-CMC layout, more efficient and synergic anticancer components-Adenosine, and Bruceine B were isolated [71]. Another study has attracted interest for the rapid screening of 28 herbal medicines for epithelial cell growth factor receptor (EGFR) by exploiting 2D HepG2/CMC-ToFMS. The detected four active components were shown to be selective inhibitors of EGFR [68]. CMC incorporating human epidermal squamous cells (A431) cells was employed in a study, targeting EGFR antagonists from medicinal herbs. The active compounds-oximatrine and matrine were identified from Radix sophorae flavescentis by mass patterns and were subjected to competitive displace­ ment assay, in vitro EGFR secretion assay and MTT cell growth assay for assessing their functional properties [72]. Human embryonic kidney 293 cells (HEK293) are one of the most used cell lines for academic and research purposes owing to their properties, and so in CMC. One important CMC setup significant in the investigation of antitumor compounds is HEK293/VEGFR-CMC. The antitumor activity of Corydalis Thizoma was shown attributed to Tetrahydropalmatine and corydaline [73]. Again, the antitumor effect of Rhizoma Belamcandae was investigated by using HEK293/EGFR-CMC-HPLC-IT-ToF-MS [74]. HEK293 based CMC utilization is a real potential aid, which can be tailored as per the requirements, as shown in the screening of α1A adreno­ ceptor agonists from Peucedanum praeruptorum Dunn utilizing HEK293 α1A/CMC and characterization of tumor antagonists from Brassica albla by using HEK293/FGFR4-CMC [75, 76]. A more complicated matrix of MaiLuoNing injection-a traditional Chinese therapeutic, containing five herbal extracts in it, is used in many treatments, but are mostly associated with many anaphylactic reactions.

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So, by using Rat basophilic leukemia-2H3 (RBL-2H3) /CMC-HPLC-ESI­ IT-ToF-MS, a procedure has been established to monitor the presence of potential anaphylactic components present in the injection, and the retained compounds were analyzed for their sensitization effect in vivo and in vitro [77]. A few more such reports were presented in the applications of CMC with different cell membranes such as HMC-1, LAD2, H1R, etc., for the screening of allergenic components present in matrices of therapeutics from plant origin [78–80]. Similarly, osteoplastic active compounds of Coptidis Rhizoma were distinguished by incorporating human periodontal ligament cells (hPDLC) in CMC [81]. Neverthless, acetone extract of Leonurus artemisia (Lour.) S. Y. Hu (Lamiaceae), which was shown to increase the uterine contrac­ tion amplitude, was investigated with Sprague-Dawley rat uterus CMC. The active compound was identified as genkwanin, in vitro experiments thereof proved its pharmacological activities [82]. A little different CMC platform was the three-dimensional cell biore­ actors. Mou et al. established a 3D cancer cell bioreactor by culturing the cancer cells on a porous scaffold. Live and fixed cells were allowed to interact with the investigated anticancer drugs, as well as non-anticancer drugs. The most productive piece of information from the study was the comparable binding degree differences of these drugs. As the anticancer drugs exhibited a far better degree of binding of >64% than